#
# Code for testing deprecated matrix classes. New test code should not be added
# here. Instead, add it to test_matrixbase.py.
#
# This entire test module and the corresponding sympy/matrices/matrices.py
# module will be removed in a future release.
#
import random
import concurrent.futures
from collections.abc import Hashable

from sympy.core.add import Add
from sympy.core.function import Function, diff, expand
from sympy.core.numbers import (E, Float, I, Integer, Rational, nan, oo, pi)
from sympy.core.power import Pow
from sympy.core.singleton import S
from sympy.core.symbol import (Symbol, symbols)
from sympy.core.sympify import sympify
from sympy.functions.elementary.complexes import Abs
from sympy.functions.elementary.exponential import (exp, log)
from sympy.functions.elementary.miscellaneous import (Max, Min, sqrt)
from sympy.functions.elementary.trigonometric import (cos, sin, tan)
from sympy.integrals.integrals import integrate
from sympy.matrices.expressions.transpose import transpose
from sympy.physics.quantum.operator import HermitianOperator, Operator, Dagger
from sympy.polys.polytools import (Poly, PurePoly)
from sympy.polys.rootoftools import RootOf
from sympy.printing.str import sstr
from sympy.sets.sets import FiniteSet
from sympy.simplify.simplify import (signsimp, simplify)
from sympy.simplify.trigsimp import trigsimp
from sympy.matrices.exceptions import (ShapeError, MatrixError,
    NonSquareMatrixError)
from sympy.matrices.matrixbase import DeferredVector
from sympy.matrices.determinant import _find_reasonable_pivot_naive
from sympy.matrices.utilities import _simplify
from sympy.matrices import (
    GramSchmidt, ImmutableMatrix, ImmutableSparseMatrix, Matrix,
    SparseMatrix, casoratian, diag, eye, hessian,
    matrix_multiply_elementwise, ones, randMatrix, rot_axis1, rot_axis2,
    rot_axis3, wronskian, zeros, MutableDenseMatrix, ImmutableDenseMatrix,
    MatrixSymbol, dotprodsimp, rot_ccw_axis1, rot_ccw_axis2, rot_ccw_axis3)
from sympy.matrices.utilities import _dotprodsimp_state
from sympy.core import Tuple, Wild
from sympy.functions.special.tensor_functions import KroneckerDelta
from sympy.utilities.iterables import flatten, capture, iterable
from sympy.utilities.exceptions import ignore_warnings
from sympy.testing.pytest import (raises, XFAIL, slow, skip, skip_under_pyodide,
                                  warns_deprecated_sympy)
from sympy.assumptions import Q
from sympy.tensor.array import Array
from sympy.tensor.array.array_derivatives import ArrayDerivative
from sympy.matrices.expressions import MatPow
from sympy.algebras import Quaternion

from sympy import O

from sympy.abc import a, b, c, d, x, y, z, t


# don't re-order this list
classes = (Matrix, SparseMatrix, ImmutableMatrix, ImmutableSparseMatrix)


# Test the deprecated matrixmixins
from sympy.matrices.common import _MinimalMatrix, _CastableMatrix
from sympy.matrices.matrices import MatrixSubspaces, MatrixReductions


with warns_deprecated_sympy():
    class SubspaceOnlyMatrix(_MinimalMatrix, _CastableMatrix, MatrixSubspaces):
        pass


with warns_deprecated_sympy():
    class ReductionsOnlyMatrix(_MinimalMatrix, _CastableMatrix, MatrixReductions):
        pass


def eye_Reductions(n):
    return ReductionsOnlyMatrix(n, n, lambda i, j: int(i == j))


def zeros_Reductions(n):
    return ReductionsOnlyMatrix(n, n, lambda i, j: 0)


def test_args():
    for n, cls in enumerate(classes):
        m = cls.zeros(3, 2)
        # all should give back the same type of arguments, e.g. ints for shape
        assert m.shape == (3, 2) and all(type(i) is int for i in m.shape)
        assert m.rows == 3 and type(m.rows) is int
        assert m.cols == 2 and type(m.cols) is int
        if not n % 2:
            assert type(m.flat()) in (list, tuple, Tuple)
        else:
            assert type(m.todok()) is dict


def test_deprecated_mat_smat():
    for cls in Matrix, ImmutableMatrix:
        m = cls.zeros(3, 2)
        with warns_deprecated_sympy():
            mat = m._mat
        assert mat == m.flat()
    for cls in SparseMatrix, ImmutableSparseMatrix:
        m = cls.zeros(3, 2)
        with warns_deprecated_sympy():
            smat = m._smat
        assert smat == m.todok()


def test_division():
    v = Matrix(1, 2, [x, y])
    assert v/z == Matrix(1, 2, [x/z, y/z])


def test_sum():
    m = Matrix([[1, 2, 3], [x, y, x], [2*y, -50, z*x]])
    assert m + m == Matrix([[2, 4, 6], [2*x, 2*y, 2*x], [4*y, -100, 2*z*x]])
    n = Matrix(1, 2, [1, 2])
    raises(ShapeError, lambda: m + n)

def test_abs():
    m = Matrix(1, 2, [-3, x])
    n = Matrix(1, 2, [3, Abs(x)])
    assert abs(m) == n

def test_addition():
    a = Matrix((
        (1, 2),
        (3, 1),
    ))

    b = Matrix((
        (1, 2),
        (3, 0),
    ))

    assert a + b == a.add(b) == Matrix([[2, 4], [6, 1]])


def test_fancy_index_matrix():
    for M in (Matrix, SparseMatrix):
        a = M(3, 3, range(9))
        assert a == a[:, :]
        assert a[1, :] == Matrix(1, 3, [3, 4, 5])
        assert a[:, 1] == Matrix([1, 4, 7])
        assert a[[0, 1], :] == Matrix([[0, 1, 2], [3, 4, 5]])
        assert a[[0, 1], 2] == a[[0, 1], [2]]
        assert a[2, [0, 1]] == a[[2], [0, 1]]
        assert a[:, [0, 1]] == Matrix([[0, 1], [3, 4], [6, 7]])
        assert a[0, 0] == 0
        assert a[0:2, :] == Matrix([[0, 1, 2], [3, 4, 5]])
        assert a[:, 0:2] == Matrix([[0, 1], [3, 4], [6, 7]])
        assert a[::2, 1] == a[[0, 2], 1]
        assert a[1, ::2] == a[1, [0, 2]]
        a = M(3, 3, range(9))
        assert a[[0, 2, 1, 2, 1], :] == Matrix([
            [0, 1, 2],
            [6, 7, 8],
            [3, 4, 5],
            [6, 7, 8],
            [3, 4, 5]])
        assert a[:, [0,2,1,2,1]] == Matrix([
            [0, 2, 1, 2, 1],
            [3, 5, 4, 5, 4],
            [6, 8, 7, 8, 7]])

    a = SparseMatrix.zeros(3)
    a[1, 2] = 2
    a[0, 1] = 3
    a[2, 0] = 4
    assert a.extract([1, 1], [2]) == Matrix([
    [2],
    [2]])
    assert a.extract([1, 0], [2, 2, 2]) == Matrix([
    [2, 2, 2],
    [0, 0, 0]])
    assert a.extract([1, 0, 1, 2], [2, 0, 1, 0]) == Matrix([
        [2, 0, 0, 0],
        [0, 0, 3, 0],
        [2, 0, 0, 0],
        [0, 4, 0, 4]])


def test_multiplication():
    a = Matrix((
        (1, 2),
        (3, 1),
        (0, 6),
    ))

    b = Matrix((
        (1, 2),
        (3, 0),
    ))

    c = a*b
    assert c[0, 0] == 7
    assert c[0, 1] == 2
    assert c[1, 0] == 6
    assert c[1, 1] == 6
    assert c[2, 0] == 18
    assert c[2, 1] == 0

    try:
        eval('c = a @ b')
    except SyntaxError:
        pass
    else:
        assert c[0, 0] == 7
        assert c[0, 1] == 2
        assert c[1, 0] == 6
        assert c[1, 1] == 6
        assert c[2, 0] == 18
        assert c[2, 1] == 0

    h = matrix_multiply_elementwise(a, c)
    assert h == a.multiply_elementwise(c)
    assert h[0, 0] == 7
    assert h[0, 1] == 4
    assert h[1, 0] == 18
    assert h[1, 1] == 6
    assert h[2, 0] == 0
    assert h[2, 1] == 0
    raises(ShapeError, lambda: matrix_multiply_elementwise(a, b))

    c = b * Symbol("x")
    assert isinstance(c, Matrix)
    assert c[0, 0] == x
    assert c[0, 1] == 2*x
    assert c[1, 0] == 3*x
    assert c[1, 1] == 0

    c2 = x * b
    assert c == c2

    c = 5 * b
    assert isinstance(c, Matrix)
    assert c[0, 0] == 5
    assert c[0, 1] == 2*5
    assert c[1, 0] == 3*5
    assert c[1, 1] == 0

    try:
        eval('c = 5 @ b')
    except SyntaxError:
        pass
    else:
        assert isinstance(c, Matrix)
        assert c[0, 0] == 5
        assert c[0, 1] == 2*5
        assert c[1, 0] == 3*5
        assert c[1, 1] == 0


def test_multiplication_inf_zero():

    M = Matrix([[oo, 0], [0, oo]])
    assert M ** 2 == M

    M = Matrix([[oo, oo], [0, 0]])
    assert M ** 2 == Matrix([[nan, nan], [nan, nan]])

    A = Matrix([
        [0, 0, 0, -S(1)/2],
        [0, 1, 0, 0],
        [0, 0, 1, 0],
        [-S(1)/2, 0, 0, 0]])

    B = Matrix([
        [pi*x**2, 0, pi*b*x**4/8 + pi*a*x**4/8 + O(x**5), pi*x**4/2 + pi*b**2*x**6/32 + pi*a*b*x**6/48 + pi*a**2*x**6/32 + O(x**7)],
        [0, pi*x**4/4, O(x**6), O(x**8)],
        [pi*b*x**4/8 + pi*a*x**4/8 + O(x**5), O(x**6), pi*b**2*x**6/32 + pi*a*b*x**6/48 + pi*a**2*x**6/32 + O(x**7), pi*b*x**6/12 + pi*a*x**6/12 + O(x**7)],
        [pi*x**4/2 + pi*b**2*x**6/32 + pi*a*b*x**6/48 + pi*a**2*x**6/32 + O(x**7), O(x**8), pi*b*x**6/12 + pi*a*x**6/12 + O(x**7), pi*x**6/3 + 3*pi*b**2*x**8/64 + pi*a*b*x**8/32 + 3*pi*a**2*x**8/64 + O(x**9)]])

    C = Matrix([
    [-pi*x**4/4 - pi*b**2*x**6/64 - pi*a*b*x**6/96 - pi*a**2*x**6/64 + O(x**7),   O(x**8),                       -pi*b*x**6/24 - pi*a*x**6/24 + O(x**7), -pi*x**6/6 - 3*pi*b**2*x**8/128 - pi*a*b*x**8/64 - 3*pi*a**2*x**8/128 + O(x**9)],
    [                                                                        0, pi*x**4/4,                                                      O(x**6),                                                                         O(x**8)],
    [                                      pi*b*x**4/8 + pi*a*x**4/8 + O(x**5),   O(x**6), pi*b**2*x**6/32 + pi*a*b*x**6/48 + pi*a**2*x**6/32 + O(x**7),                                           pi*b*x**6/12 + pi*a*x**6/12 + O(x**7)],
    [                                                               -pi*x**2/2,         0,                       -pi*b*x**4/16 - pi*a*x**4/16 + O(x**5),       -pi*x**4/4 - pi*b**2*x**6/64 - pi*a*b*x**6/96 - pi*a**2*x**6/64 + O(x**7)]])

    C2 = Matrix(4, 4, lambda i, j: Add(*(A[i,k]*B[k,j] for k in range(4))))

    assert A*B == C == C2


def test_power():
    raises(NonSquareMatrixError, lambda: Matrix((1, 2))**2)

    R = Rational
    A = Matrix([[2, 3], [4, 5]])
    assert (A**-3)[:] == [R(-269)/8, R(153)/8, R(51)/2, R(-29)/2]
    assert (A**5)[:] == [6140, 8097, 10796, 14237]
    A = Matrix([[2, 1, 3], [4, 2, 4], [6, 12, 1]])
    assert (A**3)[:] == [290, 262, 251, 448, 440, 368, 702, 954, 433]
    assert A**0 == eye(3)
    assert A**1 == A
    assert (Matrix([[2]]) ** 100)[0, 0] == 2**100
    assert eye(2)**10000000 == eye(2)
    assert Matrix([[1, 2], [3, 4]])**Integer(2) == Matrix([[7, 10], [15, 22]])

    A = Matrix([[33, 24], [48, 57]])
    assert (A**S.Half)[:] == [5, 2, 4, 7]
    A = Matrix([[0, 4], [-1, 5]])
    assert (A**S.Half)**2 == A

    assert Matrix([[1, 0], [1, 1]])**S.Half == Matrix([[1, 0], [S.Half, 1]])
    assert Matrix([[1, 0], [1, 1]])**0.5 == Matrix([[1, 0], [0.5, 1]])
    from sympy.abc import n
    assert Matrix([[1, a], [0, 1]])**n == Matrix([[1, a*n], [0, 1]])
    assert Matrix([[b, a], [0, b]])**n == Matrix([[b**n, a*b**(n-1)*n], [0, b**n]])
    assert Matrix([
        [a**n, a**(n - 1)*n, (a**n*n**2 - a**n*n)/(2*a**2)],
        [   0,         a**n,                  a**(n - 1)*n],
        [   0,            0,                          a**n]])
    assert Matrix([[a, 1, 0], [0, a, 0], [0, 0, b]])**n == Matrix([
        [a**n, a**(n-1)*n, 0],
        [0, a**n, 0],
        [0, 0, b**n]])

    A = Matrix([[1, 0], [1, 7]])
    assert A._matrix_pow_by_jordan_blocks(S(3)) == A._eval_pow_by_recursion(3)
    A = Matrix([[2]])
    assert A**10 == Matrix([[2**10]]) == A._matrix_pow_by_jordan_blocks(S(10)) == \
        A._eval_pow_by_recursion(10)

    # test issue 11964
    raises(MatrixError, lambda: Matrix([[1, 1], [3, 3]])._matrix_pow_by_jordan_blocks(S(-10)))
    A = Matrix([[0, 1, 0], [0, 0, 1], [0, 0, 0]])  # Nilpotent jordan block size 3
    assert A**10.0 == Matrix([[0, 0, 0], [0, 0, 0], [0, 0, 0]])
    raises(ValueError, lambda: A**2.1)
    raises(ValueError, lambda: A**Rational(3, 2))
    A = Matrix([[8, 1], [3, 2]])
    assert A**10.0 == Matrix([[1760744107, 272388050], [817164150, 126415807]])
    A = Matrix([[0, 0, 1], [0, 0, 1], [0, 0, 1]])  # Nilpotent jordan block size 1
    assert A**10.0 == Matrix([[0, 0, 1], [0, 0, 1], [0, 0, 1]])
    A = Matrix([[0, 1, 0], [0, 0, 1], [0, 0, 1]])  # Nilpotent jordan block size 2
    assert A**10.0 == Matrix([[0, 0, 1], [0, 0, 1], [0, 0, 1]])
    n = Symbol('n', integer=True)
    assert isinstance(A**n, MatPow)
    n = Symbol('n', integer=True, negative=True)
    raises(ValueError, lambda: A**n)
    n = Symbol('n', integer=True, nonnegative=True)
    assert A**n == Matrix([
        [KroneckerDelta(0, n), KroneckerDelta(1, n), -KroneckerDelta(0, n) - KroneckerDelta(1, n) + 1],
        [                   0, KroneckerDelta(0, n),                         1 - KroneckerDelta(0, n)],
        [                   0,                    0,                                                1]])
    assert A**(n + 2) == Matrix([[0, 0, 1], [0, 0, 1], [0, 0, 1]])
    raises(ValueError, lambda: A**Rational(3, 2))
    A = Matrix([[0, 0, 1], [3, 0, 1], [4, 3, 1]])
    assert A**5.0 == Matrix([[168,  72,  89], [291, 144, 161], [572, 267, 329]])
    assert A**5.0 == A**5
    A = Matrix([[0, 1, 0],[-1, 0, 0],[0, 0, 0]])
    n = Symbol("n")
    An = A**n
    assert An.subs(n, 2).doit() == A**2
    raises(ValueError, lambda: An.subs(n, -2).doit())
    assert An * An == A**(2*n)

    # concretizing behavior for non-integer and complex powers
    A = Matrix([[0,0,0],[0,0,0],[0,0,0]])
    n = Symbol('n', integer=True, positive=True)
    assert A**n == A
    n = Symbol('n', integer=True, nonnegative=True)
    assert A**n == diag(0**n, 0**n, 0**n)
    assert (A**n).subs(n, 0) == eye(3)
    assert (A**n).subs(n, 1) == zeros(3)
    A = Matrix ([[2,0,0],[0,2,0],[0,0,2]])
    assert A**2.1 == diag (2**2.1, 2**2.1, 2**2.1)
    assert A**I == diag (2**I, 2**I, 2**I)
    A = Matrix([[0, 1, 0], [0, 0, 1], [0, 0, 1]])
    raises(ValueError, lambda: A**2.1)
    raises(ValueError, lambda: A**I)
    A = Matrix([[S.Half, S.Half], [S.Half, S.Half]])
    assert A**S.Half == A
    A = Matrix([[1, 1],[3, 3]])
    assert A**S.Half == Matrix ([[S.Half, S.Half], [3*S.Half, 3*S.Half]])


def test_issue_17247_expression_blowup_1():
    M = Matrix([[1+x, 1-x], [1-x, 1+x]])
    with dotprodsimp(True):
        assert M.exp().expand() == Matrix([
            [ (exp(2*x) + exp(2))/2, (-exp(2*x) + exp(2))/2],
            [(-exp(2*x) + exp(2))/2,  (exp(2*x) + exp(2))/2]])

def test_issue_17247_expression_blowup_2():
    M = Matrix([[1+x, 1-x], [1-x, 1+x]])
    with dotprodsimp(True):
        P, J = M.jordan_form ()
        assert P*J*P.inv()

def test_issue_17247_expression_blowup_3():
    M = Matrix([[1+x, 1-x], [1-x, 1+x]])
    with dotprodsimp(True):
        assert M**100 == Matrix([
            [633825300114114700748351602688*x**100 + 633825300114114700748351602688, 633825300114114700748351602688 - 633825300114114700748351602688*x**100],
            [633825300114114700748351602688 - 633825300114114700748351602688*x**100, 633825300114114700748351602688*x**100 + 633825300114114700748351602688]])

def test_issue_17247_expression_blowup_4():
# This matrix takes extremely long on current master even with intermediate simplification so an abbreviated version is used. It is left here for test in case of future optimizations.
#     M = Matrix(S('''[
#         [             -3/4,       45/32 - 37*I/16,         1/4 + I/2,      -129/64 - 9*I/64,      1/4 - 5*I/16,      65/128 + 87*I/64,         -9/32 - I/16,      183/256 - 97*I/128,       3/64 + 13*I/64,         -23/32 - 59*I/256,      15/128 - 3*I/32,        19/256 + 551*I/1024],
#         [-149/64 + 49*I/32, -177/128 - 1369*I/128,  125/64 + 87*I/64, -2063/256 + 541*I/128,  85/256 - 33*I/16,  805/128 + 2415*I/512, -219/128 + 115*I/256, 6301/4096 - 6609*I/1024,  119/128 + 143*I/128, -10879/2048 + 4343*I/4096,  129/256 - 549*I/512, 42533/16384 + 29103*I/8192],
#         [          1/2 - I,         9/4 + 55*I/16,              -3/4,       45/32 - 37*I/16,         1/4 + I/2,      -129/64 - 9*I/64,         1/4 - 5*I/16,        65/128 + 87*I/64,         -9/32 - I/16,        183/256 - 97*I/128,       3/64 + 13*I/64,          -23/32 - 59*I/256],
#         [   -5/8 - 39*I/16,   2473/256 + 137*I/64, -149/64 + 49*I/32, -177/128 - 1369*I/128,  125/64 + 87*I/64, -2063/256 + 541*I/128,     85/256 - 33*I/16,    805/128 + 2415*I/512, -219/128 + 115*I/256,   6301/4096 - 6609*I/1024,  119/128 + 143*I/128,  -10879/2048 + 4343*I/4096],
#         [            1 + I,         -19/4 + 5*I/4,           1/2 - I,         9/4 + 55*I/16,              -3/4,       45/32 - 37*I/16,            1/4 + I/2,        -129/64 - 9*I/64,         1/4 - 5*I/16,          65/128 + 87*I/64,         -9/32 - I/16,         183/256 - 97*I/128],
#         [         21/8 + I,    -537/64 + 143*I/16,    -5/8 - 39*I/16,   2473/256 + 137*I/64, -149/64 + 49*I/32, -177/128 - 1369*I/128,     125/64 + 87*I/64,   -2063/256 + 541*I/128,     85/256 - 33*I/16,      805/128 + 2415*I/512, -219/128 + 115*I/256,    6301/4096 - 6609*I/1024],
#         [               -2,         17/4 - 13*I/2,             1 + I,         -19/4 + 5*I/4,           1/2 - I,         9/4 + 55*I/16,                 -3/4,         45/32 - 37*I/16,            1/4 + I/2,          -129/64 - 9*I/64,         1/4 - 5*I/16,           65/128 + 87*I/64],
#         [     1/4 + 13*I/4,    -825/64 - 147*I/32,          21/8 + I,    -537/64 + 143*I/16,    -5/8 - 39*I/16,   2473/256 + 137*I/64,    -149/64 + 49*I/32,   -177/128 - 1369*I/128,     125/64 + 87*I/64,     -2063/256 + 541*I/128,     85/256 - 33*I/16,       805/128 + 2415*I/512],
#         [             -4*I,            27/2 + 6*I,                -2,         17/4 - 13*I/2,             1 + I,         -19/4 + 5*I/4,              1/2 - I,           9/4 + 55*I/16,                 -3/4,           45/32 - 37*I/16,            1/4 + I/2,           -129/64 - 9*I/64],
#         [      1/4 + 5*I/2,       -23/8 - 57*I/16,      1/4 + 13*I/4,    -825/64 - 147*I/32,          21/8 + I,    -537/64 + 143*I/16,       -5/8 - 39*I/16,     2473/256 + 137*I/64,    -149/64 + 49*I/32,     -177/128 - 1369*I/128,     125/64 + 87*I/64,      -2063/256 + 541*I/128],
#         [               -4,               9 - 5*I,              -4*I,            27/2 + 6*I,                -2,         17/4 - 13*I/2,                1 + I,           -19/4 + 5*I/4,              1/2 - I,             9/4 + 55*I/16,                 -3/4,            45/32 - 37*I/16],
#         [             -2*I,        119/8 + 29*I/4,       1/4 + 5*I/2,       -23/8 - 57*I/16,      1/4 + 13*I/4,    -825/64 - 147*I/32,             21/8 + I,      -537/64 + 143*I/16,       -5/8 - 39*I/16,       2473/256 + 137*I/64,    -149/64 + 49*I/32,      -177/128 - 1369*I/128]]'''))
#     assert M**10 == Matrix([
#         [    7*(-221393644768594642173548179825793834595 - 1861633166167425978847110897013541127952*I)/9671406556917033397649408,      15*(31670992489131684885307005100073928751695 + 10329090958303458811115024718207404523808*I)/77371252455336267181195264,   7*(-3710978679372178839237291049477017392703 + 1377706064483132637295566581525806894169*I)/19342813113834066795298816,            (9727707023582419994616144751727760051598 - 59261571067013123836477348473611225724433*I)/9671406556917033397649408,      (31896723509506857062605551443641668183707 + 54643444538699269118869436271152084599580*I)/38685626227668133590597632,       (-2024044860947539028275487595741003997397402 + 130959428791783397562960461903698670485863*I)/309485009821345068724781056,     3*(26190251453797590396533756519358368860907 - 27221191754180839338002754608545400941638*I)/77371252455336267181195264,      (1154643595139959842768960128434994698330461 + 3385496216250226964322872072260446072295634*I)/618970019642690137449562112,     3*(-31849347263064464698310044805285774295286 - 11877437776464148281991240541742691164309*I)/77371252455336267181195264,     (4661330392283532534549306589669150228040221 - 4171259766019818631067810706563064103956871*I)/1237940039285380274899124224,        (9598353794289061833850770474812760144506 + 358027153990999990968244906482319780943983*I)/309485009821345068724781056,     (-9755135335127734571547571921702373498554177 - 4837981372692695195747379349593041939686540*I)/2475880078570760549798248448],
#         [(-379516731607474268954110071392894274962069 - 422272153179747548473724096872271700878296*I)/77371252455336267181195264, (41324748029613152354787280677832014263339501 - 12715121258662668420833935373453570749288074*I)/1237940039285380274899124224, (-339216903907423793947110742819264306542397 + 494174755147303922029979279454787373566517*I)/77371252455336267181195264, (-18121350839962855576667529908850640619878381 - 37413012454129786092962531597292531089199003*I)/1237940039285380274899124224, (2489661087330511608618880408199633556675926 + 1137821536550153872137379935240732287260863*I)/309485009821345068724781056, (-136644109701594123227587016790354220062972119 + 110130123468183660555391413889600443583585272*I)/4951760157141521099596496896, (1488043981274920070468141664150073426459593 - 9691968079933445130866371609614474474327650*I)/1237940039285380274899124224,  27*(4636797403026872518131756991410164760195942 + 3369103221138229204457272860484005850416533*I)/4951760157141521099596496896, (-8534279107365915284081669381642269800472363 + 2241118846262661434336333368511372725482742*I)/1237940039285380274899124224,  (60923350128174260992536531692058086830950875 - 263673488093551053385865699805250505661590126*I)/9903520314283042199192993792, (18520943561240714459282253753348921824172569 + 24846649186468656345966986622110971925703604*I)/4951760157141521099596496896,  (-232781130692604829085973604213529649638644431 + 35981505277760667933017117949103953338570617*I)/9903520314283042199192993792],
#         [      (8742968295129404279528270438201520488950 + 3061473358639249112126847237482570858327*I)/4835703278458516698824704,      (-245657313712011778432792959787098074935273 + 253113767861878869678042729088355086740856*I)/38685626227668133590597632,      (1947031161734702327107371192008011621193 - 19462330079296259148177542369999791122762*I)/9671406556917033397649408,        (552856485625209001527688949522750288619217 + 392928441196156725372494335248099016686580*I)/77371252455336267181195264,      (-44542866621905323121630214897126343414629 + 3265340021421335059323962377647649632959*I)/19342813113834066795298816,          (136272594005759723105646069956434264218730 - 330975364731707309489523680957584684763587*I)/38685626227668133590597632,       (27392593965554149283318732469825168894401 + 75157071243800133880129376047131061115278*I)/38685626227668133590597632,      7*(-357821652913266734749960136017214096276154 - 45509144466378076475315751988405961498243*I)/309485009821345068724781056,       (104485001373574280824835174390219397141149 - 99041000529599568255829489765415726168162*I)/77371252455336267181195264,      (1198066993119982409323525798509037696321291 + 4249784165667887866939369628840569844519936*I)/618970019642690137449562112,       (-114985392587849953209115599084503853611014 - 52510376847189529234864487459476242883449*I)/77371252455336267181195264,      (6094620517051332877965959223269600650951573 - 4683469779240530439185019982269137976201163*I)/1237940039285380274899124224],
#         [ (611292255597977285752123848828590587708323 - 216821743518546668382662964473055912169502*I)/77371252455336267181195264,  (-1144023204575811464652692396337616594307487 + 12295317806312398617498029126807758490062855*I)/309485009821345068724781056, (-374093027769390002505693378578475235158281 - 573533923565898290299607461660384634333639*I)/77371252455336267181195264,   (47405570632186659000138546955372796986832987 - 2837476058950808941605000274055970055096534*I)/1237940039285380274899124224,   (-571573207393621076306216726219753090535121 + 533381457185823100878764749236639320783831*I)/77371252455336267181195264,     (-7096548151856165056213543560958582513797519 - 24035731898756040059329175131592138642195366*I)/618970019642690137449562112,  (2396762128833271142000266170154694033849225 + 1448501087375679588770230529017516492953051*I)/309485009821345068724781056, (-150609293845161968447166237242456473262037053 + 92581148080922977153207018003184520294188436*I)/4951760157141521099596496896, 5*(270278244730804315149356082977618054486347 - 1997830155222496880429743815321662710091562*I)/1237940039285380274899124224,   (62978424789588828258068912690172109324360330 + 44803641177219298311493356929537007630129097*I)/2475880078570760549798248448, 19*(-451431106327656743945775812536216598712236 + 114924966793632084379437683991151177407937*I)/1237940039285380274899124224,   (63417747628891221594106738815256002143915995 - 261508229397507037136324178612212080871150958*I)/9903520314283042199192993792],
#         [     (-2144231934021288786200752920446633703357 + 2305614436009705803670842248131563850246*I)/1208925819614629174706176,       (-90720949337459896266067589013987007078153 - 221951119475096403601562347412753844534569*I)/19342813113834066795298816,      (11590973613116630788176337262688659880376 + 6514520676308992726483494976339330626159*I)/4835703278458516698824704,      3*(-131776217149000326618649542018343107657237 + 79095042939612668486212006406818285287004*I)/38685626227668133590597632,       (10100577916793945997239221374025741184951 - 28631383488085522003281589065994018550748*I)/9671406556917033397649408,         67*(10090295594251078955008130473573667572549 + 10449901522697161049513326446427839676762*I)/77371252455336267181195264,       (-54270981296988368730689531355811033930513 - 3413683117592637309471893510944045467443*I)/19342813113834066795298816,         (440372322928679910536575560069973699181278 - 736603803202303189048085196176918214409081*I)/77371252455336267181195264,        (33220374714789391132887731139763250155295 + 92055083048787219934030779066298919603554*I)/38685626227668133590597632,      5*(-594638554579967244348856981610805281527116 - 82309245323128933521987392165716076704057*I)/309485009821345068724781056,       (128056368815300084550013708313312073721955 - 114619107488668120303579745393765245911404*I)/77371252455336267181195264,       21*(59839959255173222962789517794121843393573 + 241507883613676387255359616163487405826334*I)/618970019642690137449562112],
#         [ (-13454485022325376674626653802541391955147 + 184471402121905621396582628515905949793486*I)/19342813113834066795298816,   (-6158730123400322562149780662133074862437105 - 3416173052604643794120262081623703514107476*I)/154742504910672534362390528,  (770558003844914708453618983120686116100419 - 127758381209767638635199674005029818518766*I)/77371252455336267181195264,   (-4693005771813492267479835161596671660631703 + 12703585094750991389845384539501921531449948*I)/309485009821345068724781056,   (-295028157441149027913545676461260860036601 - 841544569970643160358138082317324743450770*I)/77371252455336267181195264,     (56716442796929448856312202561538574275502893 + 7216818824772560379753073185990186711454778*I)/1237940039285380274899124224,  15*(-87061038932753366532685677510172566368387 + 61306141156647596310941396434445461895538*I)/154742504910672534362390528,    (-3455315109680781412178133042301025723909347 - 24969329563196972466388460746447646686670670*I)/618970019642690137449562112,   (2453418854160886481106557323699250865361849 + 1497886802326243014471854112161398141242514*I)/309485009821345068724781056, (-151343224544252091980004429001205664193082173 + 90471883264187337053549090899816228846836628*I)/4951760157141521099596496896,   (1652018205533026103358164026239417416432989 - 9959733619236515024261775397109724431400162*I)/1237940039285380274899124224,  3*(40676374242956907656984876692623172736522006 + 31023357083037817469535762230872667581366205*I)/4951760157141521099596496896],
#         [     (-1226990509403328460274658603410696548387 - 4131739423109992672186585941938392788458*I)/1208925819614629174706176,         (162392818524418973411975140074368079662703 + 23706194236915374831230612374344230400704*I)/9671406556917033397649408,      (-3935678233089814180000602553655565621193 + 2283744757287145199688061892165659502483*I)/1208925819614629174706176,         (-2400210250844254483454290806930306285131 - 315571356806370996069052930302295432758205*I)/19342813113834066795298816,       (13365917938215281056563183751673390817910 + 15911483133819801118348625831132324863881*I)/4835703278458516698824704,        3*(-215950551370668982657516660700301003897855 + 51684341999223632631602864028309400489378*I)/38685626227668133590597632,        (20886089946811765149439844691320027184765 - 30806277083146786592790625980769214361844*I)/9671406556917033397649408,        (562180634592713285745940856221105667874855 + 1031543963988260765153550559766662245114916*I)/77371252455336267181195264,       (-65820625814810177122941758625652476012867 - 12429918324787060890804395323920477537595*I)/19342813113834066795298816,         (319147848192012911298771180196635859221089 - 402403304933906769233365689834404519960394*I)/38685626227668133590597632,        (23035615120921026080284733394359587955057 + 115351677687031786114651452775242461310624*I)/38685626227668133590597632,      (-3426830634881892756966440108592579264936130 - 1022954961164128745603407283836365128598559*I)/309485009821345068724781056],
#         [ (-192574788060137531023716449082856117537757 - 69222967328876859586831013062387845780692*I)/19342813113834066795298816,     (2736383768828013152914815341491629299773262 - 2773252698016291897599353862072533475408743*I)/77371252455336267181195264,  (-23280005281223837717773057436155921656805 + 214784953368021840006305033048142888879224*I)/19342813113834066795298816,     (-3035247484028969580570400133318947903462326 - 2195168903335435855621328554626336958674325*I)/77371252455336267181195264,     (984552428291526892214541708637840971548653 - 64006622534521425620714598573494988589378*I)/77371252455336267181195264,      (-3070650452470333005276715136041262898509903 + 7286424705750810474140953092161794621989080*I)/154742504910672534362390528,    (-147848877109756404594659513386972921139270 - 416306113044186424749331418059456047650861*I)/38685626227668133590597632,    (55272118474097814260289392337160619494260781 + 7494019668394781211907115583302403519488058*I)/1237940039285380274899124224,     (-581537886583682322424771088996959213068864 + 542191617758465339135308203815256798407429*I)/77371252455336267181195264,    (-6422548983676355789975736799494791970390991 - 23524183982209004826464749309156698827737702*I)/618970019642690137449562112,     7*(180747195387024536886923192475064903482083 + 84352527693562434817771649853047924991804*I)/154742504910672534362390528, (-135485179036717001055310712747643466592387031 + 102346575226653028836678855697782273460527608*I)/4951760157141521099596496896],
#         [        (3384238362616083147067025892852431152105 + 156724444932584900214919898954874618256*I)/604462909807314587353088,        (-59558300950677430189587207338385764871866 + 114427143574375271097298201388331237478857*I)/4835703278458516698824704,      (-1356835789870635633517710130971800616227 - 7023484098542340388800213478357340875410*I)/1208925819614629174706176,          (234884918567993750975181728413524549575881 + 79757294640629983786895695752733890213506*I)/9671406556917033397649408,        (-7632732774935120473359202657160313866419 + 2905452608512927560554702228553291839465*I)/1208925819614629174706176,           (52291747908702842344842889809762246649489 - 520996778817151392090736149644507525892649*I)/19342813113834066795298816,        (17472406829219127839967951180375981717322 + 23464704213841582137898905375041819568669*I)/4835703278458516698824704,        (-911026971811893092350229536132730760943307 + 150799318130900944080399439626714846752360*I)/38685626227668133590597632,         (26234457233977042811089020440646443590687 - 45650293039576452023692126463683727692890*I)/9671406556917033397649408,       3*(288348388717468992528382586652654351121357 + 454526517721403048270274049572136109264668*I)/77371252455336267181195264,        (-91583492367747094223295011999405657956347 - 12704691128268298435362255538069612411331*I)/19342813113834066795298816,          (411208730251327843849027957710164064354221 - 569898526380691606955496789378230959965898*I)/38685626227668133590597632],
#         [    (27127513117071487872628354831658811211795 - 37765296987901990355760582016892124833857*I)/4835703278458516698824704,     (1741779916057680444272938534338833170625435 + 3083041729779495966997526404685535449810378*I)/77371252455336267181195264, 3*(-60642236251815783728374561836962709533401 - 24630301165439580049891518846174101510744*I)/19342813113834066795298816,      3*(445885207364591681637745678755008757483408 - 350948497734812895032502179455610024541643*I)/38685626227668133590597632,    (-47373295621391195484367368282471381775684 + 219122969294089357477027867028071400054973*I)/19342813113834066795298816,       (-2801565819673198722993348253876353741520438 - 2250142129822658548391697042460298703335701*I)/77371252455336267181195264,      (801448252275607253266997552356128790317119 - 50890367688077858227059515894356594900558*I)/77371252455336267181195264,    (-5082187758525931944557763799137987573501207 + 11610432359082071866576699236013484487676124*I)/309485009821345068724781056,     (-328925127096560623794883760398247685166830 - 643447969697471610060622160899409680422019*I)/77371252455336267181195264,    15*(2954944669454003684028194956846659916299765 + 33434406416888505837444969347824812608566*I)/1237940039285380274899124224,      (-415749104352001509942256567958449835766827 + 479330966144175743357171151440020955412219*I)/77371252455336267181195264,  3*(-4639987285852134369449873547637372282914255 - 11994411888966030153196659207284951579243273*I)/1237940039285380274899124224],
#         [       (-478846096206269117345024348666145495601 + 1249092488629201351470551186322814883283*I)/302231454903657293676544,         (-17749319421930878799354766626365926894989 - 18264580106418628161818752318217357231971*I)/1208925819614629174706176,         (2801110795431528876849623279389579072819 + 363258850073786330770713557775566973248*I)/604462909807314587353088,          (-59053496693129013745775512127095650616252 + 78143588734197260279248498898321500167517*I)/4835703278458516698824704,         (-283186724922498212468162690097101115349 - 6443437753863179883794497936345437398276*I)/1208925819614629174706176,            (188799118826748909206887165661384998787543 + 84274736720556630026311383931055307398820*I)/9671406556917033397649408,         (-5482217151670072904078758141270295025989 + 1818284338672191024475557065444481298568*I)/1208925819614629174706176,          (56564463395350195513805521309731217952281 - 360208541416798112109946262159695452898431*I)/19342813113834066795298816,        11*(1259539805728870739006416869463689438068 + 1409136581547898074455004171305324917387*I)/4835703278458516698824704,       5*(-123701190701414554945251071190688818343325 + 30997157322590424677294553832111902279712*I)/38685626227668133590597632,          (16130917381301373033736295883982414239781 - 32752041297570919727145380131926943374516*I)/9671406556917033397649408,          (650301385108223834347093740500375498354925 + 899526407681131828596801223402866051809258*I)/77371252455336267181195264],
#         [      (9011388245256140876590294262420614839483 + 8167917972423946282513000869327525382672*I)/1208925819614629174706176,       (-426393174084720190126376382194036323028924 + 180692224825757525982858693158209545430621*I)/9671406556917033397649408,     (24588556702197802674765733448108154175535 - 45091766022876486566421953254051868331066*I)/4835703278458516698824704,      (1872113939365285277373877183750416985089691 + 3030392393733212574744122057679633775773130*I)/77371252455336267181195264,    (-222173405538046189185754954524429864167549 - 75193157893478637039381059488387511299116*I)/19342813113834066795298816,        (2670821320766222522963689317316937579844558 - 2645837121493554383087981511645435472169191*I)/77371252455336267181195264,     5*(-2100110309556476773796963197283876204940 + 41957457246479840487980315496957337371937*I)/19342813113834066795298816,     (-5733743755499084165382383818991531258980593 - 3328949988392698205198574824396695027195732*I)/154742504910672534362390528,      (707827994365259025461378911159398206329247 - 265730616623227695108042528694302299777294*I)/77371252455336267181195264,    (-1442501604682933002895864804409322823788319 + 11504137805563265043376405214378288793343879*I)/309485009821345068724781056,         (-56130472299445561499538726459719629522285 - 61117552419727805035810982426639329818864*I)/9671406556917033397649408,    (39053692321126079849054272431599539429908717 - 10209127700342570953247177602860848130710666*I)/1237940039285380274899124224]])
    M = Matrix(S('''[
        [             -3/4,       45/32 - 37*I/16,         1/4 + I/2,      -129/64 - 9*I/64,      1/4 - 5*I/16,      65/128 + 87*I/64],
        [-149/64 + 49*I/32, -177/128 - 1369*I/128,  125/64 + 87*I/64, -2063/256 + 541*I/128,  85/256 - 33*I/16,  805/128 + 2415*I/512],
        [          1/2 - I,         9/4 + 55*I/16,              -3/4,       45/32 - 37*I/16,         1/4 + I/2,      -129/64 - 9*I/64],
        [   -5/8 - 39*I/16,   2473/256 + 137*I/64, -149/64 + 49*I/32, -177/128 - 1369*I/128,  125/64 + 87*I/64, -2063/256 + 541*I/128],
        [            1 + I,         -19/4 + 5*I/4,           1/2 - I,         9/4 + 55*I/16,              -3/4,       45/32 - 37*I/16],
        [         21/8 + I,    -537/64 + 143*I/16,    -5/8 - 39*I/16,   2473/256 + 137*I/64, -149/64 + 49*I/32, -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert M**10 == Matrix(S('''[
            [     7369525394972778926719607798014571861/604462909807314587353088 - 229284202061790301477392339912557559*I/151115727451828646838272,   -19704281515163975949388435612632058035/1208925819614629174706176 + 14319858347987648723768698170712102887*I/302231454903657293676544,      -3623281909451783042932142262164941211/604462909807314587353088 - 6039240602494288615094338643452320495*I/604462909807314587353088,    109260497799140408739847239685705357695/2417851639229258349412352 - 7427566006564572463236368211555511431*I/2417851639229258349412352, -16095803767674394244695716092817006641/2417851639229258349412352 + 10336681897356760057393429626719177583*I/1208925819614629174706176,    -42207883340488041844332828574359769743/2417851639229258349412352 - 182332262671671273188016400290188468499*I/4835703278458516698824704],
            [50566491050825573392726324995779608259/1208925819614629174706176 - 90047007594468146222002432884052362145*I/2417851639229258349412352,  74273703462900000967697427843983822011/1208925819614629174706176 + 265947522682943571171988741842776095421*I/1208925819614629174706176, -116900341394390200556829767923360888429/2417851639229258349412352 - 53153263356679268823910621474478756845*I/2417851639229258349412352, 195407378023867871243426523048612490249/1208925819614629174706176 - 1242417915995360200584837585002906728929*I/9671406556917033397649408,   -863597594389821970177319682495878193/302231454903657293676544 + 476936100741548328800725360758734300481*I/9671406556917033397649408, -3154451590535653853562472176601754835575/19342813113834066795298816 - 232909875490506237386836489998407329215*I/2417851639229258349412352],
            [   -1715444997702484578716037230949868543/302231454903657293676544 + 5009695651321306866158517287924120777*I/302231454903657293676544,     -30551582497996879620371947949342101301/604462909807314587353088 - 7632518367986526187139161303331519629*I/151115727451828646838272,           312680739924495153190604170938220575/18889465931478580854784 - 108664334509328818765959789219208459*I/75557863725914323419136,    -14693696966703036206178521686918865509/604462909807314587353088 + 72345386220900843930147151999899692401*I/1208925819614629174706176,  -8218872496728882299722894680635296519/1208925819614629174706176 - 16776782833358893712645864791807664983*I/1208925819614629174706176,      143237839169380078671242929143670635137/2417851639229258349412352 + 2883817094806115974748882735218469447*I/2417851639229258349412352],
            [   3087979417831061365023111800749855987/151115727451828646838272 + 34441942370802869368851419102423997089*I/604462909807314587353088, -148309181940158040917731426845476175667/604462909807314587353088 - 263987151804109387844966835369350904919*I/9671406556917033397649408,   50259518594816377378747711930008883165/1208925819614629174706176 - 95713974916869240305450001443767979653*I/2417851639229258349412352,  153466447023875527996457943521467271119/2417851639229258349412352 + 517285524891117105834922278517084871349*I/2417851639229258349412352,  -29184653615412989036678939366291205575/604462909807314587353088 - 27551322282526322041080173287022121083*I/1208925819614629174706176,   196404220110085511863671393922447671649/1208925819614629174706176 - 1204712019400186021982272049902206202145*I/9671406556917033397649408],
            [     -2632581805949645784625606590600098779/151115727451828646838272 - 589957435912868015140272627522612771*I/37778931862957161709568,     26727850893953715274702844733506310247/302231454903657293676544 - 10825791956782128799168209600694020481*I/302231454903657293676544,      -1036348763702366164044671908440791295/151115727451828646838272 + 3188624571414467767868303105288107375*I/151115727451828646838272,     -36814959939970644875593411585393242449/604462909807314587353088 - 18457555789119782404850043842902832647*I/302231454903657293676544,      12454491297984637815063964572803058647/604462909807314587353088 - 340489532842249733975074349495329171*I/302231454903657293676544,      -19547211751145597258386735573258916681/604462909807314587353088 + 87299583775782199663414539883938008933*I/1208925819614629174706176],
            [  -40281994229560039213253423262678393183/604462909807314587353088 - 2939986850065527327299273003299736641*I/604462909807314587353088, 331940684638052085845743020267462794181/2417851639229258349412352 - 284574901963624403933361315517248458969*I/1208925819614629174706176,      6453843623051745485064693628073010961/302231454903657293676544 + 36062454107479732681350914931391590957*I/604462909807314587353088,  -147665869053634695632880753646441962067/604462909807314587353088 - 305987938660447291246597544085345123927*I/9671406556917033397649408,  107821369195275772166593879711259469423/2417851639229258349412352 - 11645185518211204108659001435013326687*I/302231454903657293676544,     64121228424717666402009446088588091619/1208925819614629174706176 + 265557133337095047883844369272389762133*I/1208925819614629174706176]]'''))

def test_issue_17247_expression_blowup_5():
    M = Matrix(6, 6, lambda i, j: 1 + (-1)**(i+j)*I)
    with dotprodsimp(True):
        assert M.charpoly('x') == PurePoly(x**6 + (-6 - 6*I)*x**5 + 36*I*x**4, x, domain='EX')

def test_issue_17247_expression_blowup_6():
    M = Matrix(8, 8, [x+i for i in range (64)])
    with dotprodsimp(True):
        assert M.det('bareiss') == 0

def test_issue_17247_expression_blowup_7():
    M = Matrix(6, 6, lambda i, j: 1 + (-1)**(i+j)*I)
    with dotprodsimp(True):
        assert M.det('berkowitz') == 0

def test_issue_17247_expression_blowup_8():
    M = Matrix(8, 8, [x+i for i in range (64)])
    with dotprodsimp(True):
        assert M.det('lu') == 0

def test_issue_17247_expression_blowup_9():
    M = Matrix(8, 8, [x+i for i in range (64)])
    with dotprodsimp(True):
        assert M.rref() == (Matrix([
            [1, 0, -1, -2, -3, -4, -5, -6],
            [0, 1,  2,  3,  4,  5,  6,  7],
            [0, 0,  0,  0,  0,  0,  0,  0],
            [0, 0,  0,  0,  0,  0,  0,  0],
            [0, 0,  0,  0,  0,  0,  0,  0],
            [0, 0,  0,  0,  0,  0,  0,  0],
            [0, 0,  0,  0,  0,  0,  0,  0],
            [0, 0,  0,  0,  0,  0,  0,  0]]), (0, 1))

def test_issue_17247_expression_blowup_10():
    M = Matrix(6, 6, lambda i, j: 1 + (-1)**(i+j)*I)
    with dotprodsimp(True):
        assert M.cofactor(0, 0) == 0

def test_issue_17247_expression_blowup_11():
    M = Matrix(6, 6, lambda i, j: 1 + (-1)**(i+j)*I)
    with dotprodsimp(True):
        assert M.cofactor_matrix() == Matrix(6, 6, [0]*36)

def test_issue_17247_expression_blowup_12():
    M = Matrix(6, 6, lambda i, j: 1 + (-1)**(i+j)*I)
    with dotprodsimp(True):
        assert M.eigenvals() == {6: 1, 6*I: 1, 0: 4}

def test_issue_17247_expression_blowup_13():
    M = Matrix([
        [    0, 1 - x, x + 1, 1 - x],
        [1 - x, x + 1,     0, x + 1],
        [    0, 1 - x, x + 1, 1 - x],
        [    0,     0,     1 - x, 0]])

    ev = M.eigenvects()
    assert ev[0] == (0, 2, [Matrix([0, -1, 0, 1])])
    assert ev[1][0] == x - sqrt(2)*(x - 1) + 1
    assert ev[1][1] == 1
    assert ev[1][2][0].expand(deep=False, numer=True) == Matrix([
        [(-x + sqrt(2)*(x - 1) - 1)/(x - 1)],
        [-4*x/(x**2 - 2*x + 1) + (x + 1)*(x - sqrt(2)*(x - 1) + 1)/(x**2 - 2*x + 1)],
        [(-x + sqrt(2)*(x - 1) - 1)/(x - 1)],
        [1]
    ])

    assert ev[2][0] == x + sqrt(2)*(x - 1) + 1
    assert ev[2][1] == 1
    assert ev[2][2][0].expand(deep=False, numer=True) == Matrix([
        [(-x - sqrt(2)*(x - 1) - 1)/(x - 1)],
        [-4*x/(x**2 - 2*x + 1) + (x + 1)*(x + sqrt(2)*(x - 1) + 1)/(x**2 - 2*x + 1)],
        [(-x - sqrt(2)*(x - 1) - 1)/(x - 1)],
        [1]
    ])


def test_issue_17247_expression_blowup_14():
    M = Matrix(8, 8, ([1+x, 1-x]*4 + [1-x, 1+x]*4)*4)
    with dotprodsimp(True):
        assert M.echelon_form() == Matrix([
            [x + 1, 1 - x, x + 1, 1 - x, x + 1, 1 - x, x + 1, 1 - x],
            [    0,   4*x,     0,   4*x,     0,   4*x,     0,   4*x],
            [    0,     0,     0,     0,     0,     0,     0,     0],
            [    0,     0,     0,     0,     0,     0,     0,     0],
            [    0,     0,     0,     0,     0,     0,     0,     0],
            [    0,     0,     0,     0,     0,     0,     0,     0],
            [    0,     0,     0,     0,     0,     0,     0,     0],
            [    0,     0,     0,     0,     0,     0,     0,     0]])

def test_issue_17247_expression_blowup_15():
    M = Matrix(8, 8, ([1+x, 1-x]*4 + [1-x, 1+x]*4)*4)
    with dotprodsimp(True):
        assert M.rowspace() == [Matrix([[x + 1, 1 - x, x + 1, 1 - x, x + 1, 1 - x, x + 1, 1 - x]]), Matrix([[0, 4*x, 0, 4*x, 0, 4*x, 0, 4*x]])]

def test_issue_17247_expression_blowup_16():
    M = Matrix(8, 8, ([1+x, 1-x]*4 + [1-x, 1+x]*4)*4)
    with dotprodsimp(True):
        assert M.columnspace() == [Matrix([[x + 1],[1 - x],[x + 1],[1 - x],[x + 1],[1 - x],[x + 1],[1 - x]]), Matrix([[1 - x],[x + 1],[1 - x],[x + 1],[1 - x],[x + 1],[1 - x],[x + 1]])]

def test_issue_17247_expression_blowup_17():
    M = Matrix(8, 8, [x+i for i in range (64)])
    with dotprodsimp(True):
        assert M.nullspace() == [
            Matrix([[1],[-2],[1],[0],[0],[0],[0],[0]]),
            Matrix([[2],[-3],[0],[1],[0],[0],[0],[0]]),
            Matrix([[3],[-4],[0],[0],[1],[0],[0],[0]]),
            Matrix([[4],[-5],[0],[0],[0],[1],[0],[0]]),
            Matrix([[5],[-6],[0],[0],[0],[0],[1],[0]]),
            Matrix([[6],[-7],[0],[0],[0],[0],[0],[1]])]

def test_issue_17247_expression_blowup_18():
    M = Matrix(6, 6, ([1+x, 1-x]*3 + [1-x, 1+x]*3)*3)
    with dotprodsimp(True):
        assert not M.is_nilpotent()

def test_issue_17247_expression_blowup_19():
    M = Matrix(S('''[
        [             -3/4,                     0,         1/4 + I/2,                     0],
        [                0, -177/128 - 1369*I/128,                 0, -2063/256 + 541*I/128],
        [          1/2 - I,                     0,                 0,                     0],
        [                0,                     0,                 0, -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert not M.is_diagonalizable()

def test_issue_17247_expression_blowup_20():
    M = Matrix([
    [x + 1,  1 - x,      0,      0],
    [1 - x,  x + 1,      0,  x + 1],
    [    0,  1 - x,  x + 1,      0],
    [    0,      0,      0,  x + 1]])
    with dotprodsimp(True):
        assert M.diagonalize() == (Matrix([
            [1,  1, 0, (x + 1)/(x - 1)],
            [1, -1, 0,               0],
            [1,  1, 1,               0],
            [0,  0, 0,               1]]),
            Matrix([
            [2,   0,     0,     0],
            [0, 2*x,     0,     0],
            [0,   0, x + 1,     0],
            [0,   0,     0, x + 1]]))

def test_issue_17247_expression_blowup_21():
    M = Matrix(S('''[
        [             -3/4,       45/32 - 37*I/16,                   0,                     0],
        [-149/64 + 49*I/32, -177/128 - 1369*I/128,                   0, -2063/256 + 541*I/128],
        [                0,         9/4 + 55*I/16, 2473/256 + 137*I/64,                     0],
        [                0,                     0,                   0, -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert M.inv(method='GE') == Matrix(S('''[
            [-26194832/3470993 - 31733264*I/3470993, 156352/3470993 + 10325632*I/3470993, 0, -7741283181072/3306971225785 + 2999007604624*I/3306971225785],
            [4408224/3470993 - 9675328*I/3470993, -2422272/3470993 + 1523712*I/3470993, 0, -1824666489984/3306971225785 - 1401091949952*I/3306971225785],
            [-26406945676288/22270005630769 + 10245925485056*I/22270005630769, 7453523312640/22270005630769 + 1601616519168*I/22270005630769, 633088/6416033 - 140288*I/6416033, 872209227109521408/21217636514687010905 + 6066405081802389504*I/21217636514687010905],
            [0, 0, 0, -11328/952745 + 87616*I/952745]]'''))

def test_issue_17247_expression_blowup_22():
    M = Matrix(S('''[
        [             -3/4,       45/32 - 37*I/16,                   0,                     0],
        [-149/64 + 49*I/32, -177/128 - 1369*I/128,                   0, -2063/256 + 541*I/128],
        [                0,         9/4 + 55*I/16, 2473/256 + 137*I/64,                     0],
        [                0,                     0,                   0, -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert M.inv(method='LU') == Matrix(S('''[
            [-26194832/3470993 - 31733264*I/3470993, 156352/3470993 + 10325632*I/3470993, 0, -7741283181072/3306971225785 + 2999007604624*I/3306971225785],
            [4408224/3470993 - 9675328*I/3470993, -2422272/3470993 + 1523712*I/3470993, 0, -1824666489984/3306971225785 - 1401091949952*I/3306971225785],
            [-26406945676288/22270005630769 + 10245925485056*I/22270005630769, 7453523312640/22270005630769 + 1601616519168*I/22270005630769, 633088/6416033 - 140288*I/6416033, 872209227109521408/21217636514687010905 + 6066405081802389504*I/21217636514687010905],
            [0, 0, 0, -11328/952745 + 87616*I/952745]]'''))

def test_issue_17247_expression_blowup_23():
    M = Matrix(S('''[
        [             -3/4,       45/32 - 37*I/16,                   0,                     0],
        [-149/64 + 49*I/32, -177/128 - 1369*I/128,                   0, -2063/256 + 541*I/128],
        [                0,         9/4 + 55*I/16, 2473/256 + 137*I/64,                     0],
        [                0,                     0,                   0, -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert M.inv(method='ADJ').expand() == Matrix(S('''[
            [-26194832/3470993 - 31733264*I/3470993, 156352/3470993 + 10325632*I/3470993, 0, -7741283181072/3306971225785 + 2999007604624*I/3306971225785],
            [4408224/3470993 - 9675328*I/3470993, -2422272/3470993 + 1523712*I/3470993, 0, -1824666489984/3306971225785 - 1401091949952*I/3306971225785],
            [-26406945676288/22270005630769 + 10245925485056*I/22270005630769, 7453523312640/22270005630769 + 1601616519168*I/22270005630769, 633088/6416033 - 140288*I/6416033, 872209227109521408/21217636514687010905 + 6066405081802389504*I/21217636514687010905],
            [0, 0, 0, -11328/952745 + 87616*I/952745]]'''))

def test_issue_17247_expression_blowup_24():
    M = SparseMatrix(S('''[
        [             -3/4,       45/32 - 37*I/16,                   0,                     0],
        [-149/64 + 49*I/32, -177/128 - 1369*I/128,                   0, -2063/256 + 541*I/128],
        [                0,         9/4 + 55*I/16, 2473/256 + 137*I/64,                     0],
        [                0,                     0,                   0, -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert M.inv(method='CH') == Matrix(S('''[
            [-26194832/3470993 - 31733264*I/3470993, 156352/3470993 + 10325632*I/3470993, 0, -7741283181072/3306971225785 + 2999007604624*I/3306971225785],
            [4408224/3470993 - 9675328*I/3470993, -2422272/3470993 + 1523712*I/3470993, 0, -1824666489984/3306971225785 - 1401091949952*I/3306971225785],
            [-26406945676288/22270005630769 + 10245925485056*I/22270005630769, 7453523312640/22270005630769 + 1601616519168*I/22270005630769, 633088/6416033 - 140288*I/6416033, 872209227109521408/21217636514687010905 + 6066405081802389504*I/21217636514687010905],
            [0, 0, 0, -11328/952745 + 87616*I/952745]]'''))

def test_issue_17247_expression_blowup_25():
    M = SparseMatrix(S('''[
        [             -3/4,       45/32 - 37*I/16,                   0,                     0],
        [-149/64 + 49*I/32, -177/128 - 1369*I/128,                   0, -2063/256 + 541*I/128],
        [                0,         9/4 + 55*I/16, 2473/256 + 137*I/64,                     0],
        [                0,                     0,                   0, -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert M.inv(method='LDL') == Matrix(S('''[
            [-26194832/3470993 - 31733264*I/3470993, 156352/3470993 + 10325632*I/3470993, 0, -7741283181072/3306971225785 + 2999007604624*I/3306971225785],
            [4408224/3470993 - 9675328*I/3470993, -2422272/3470993 + 1523712*I/3470993, 0, -1824666489984/3306971225785 - 1401091949952*I/3306971225785],
            [-26406945676288/22270005630769 + 10245925485056*I/22270005630769, 7453523312640/22270005630769 + 1601616519168*I/22270005630769, 633088/6416033 - 140288*I/6416033, 872209227109521408/21217636514687010905 + 6066405081802389504*I/21217636514687010905],
            [0, 0, 0, -11328/952745 + 87616*I/952745]]'''))

def test_issue_17247_expression_blowup_26():
    M = Matrix(S('''[
        [             -3/4,       45/32 - 37*I/16,         1/4 + I/2,      -129/64 - 9*I/64,      1/4 - 5*I/16,      65/128 + 87*I/64,         -9/32 - I/16,      183/256 - 97*I/128],
        [-149/64 + 49*I/32, -177/128 - 1369*I/128,  125/64 + 87*I/64, -2063/256 + 541*I/128,  85/256 - 33*I/16,  805/128 + 2415*I/512, -219/128 + 115*I/256, 6301/4096 - 6609*I/1024],
        [          1/2 - I,         9/4 + 55*I/16,              -3/4,       45/32 - 37*I/16,         1/4 + I/2,      -129/64 - 9*I/64,         1/4 - 5*I/16,        65/128 + 87*I/64],
        [   -5/8 - 39*I/16,   2473/256 + 137*I/64, -149/64 + 49*I/32, -177/128 - 1369*I/128,  125/64 + 87*I/64, -2063/256 + 541*I/128,     85/256 - 33*I/16,    805/128 + 2415*I/512],
        [            1 + I,         -19/4 + 5*I/4,           1/2 - I,         9/4 + 55*I/16,              -3/4,       45/32 - 37*I/16,            1/4 + I/2,        -129/64 - 9*I/64],
        [         21/8 + I,    -537/64 + 143*I/16,    -5/8 - 39*I/16,   2473/256 + 137*I/64, -149/64 + 49*I/32, -177/128 - 1369*I/128,     125/64 + 87*I/64,   -2063/256 + 541*I/128],
        [               -2,         17/4 - 13*I/2,             1 + I,         -19/4 + 5*I/4,           1/2 - I,         9/4 + 55*I/16,                 -3/4,         45/32 - 37*I/16],
        [     1/4 + 13*I/4,    -825/64 - 147*I/32,          21/8 + I,    -537/64 + 143*I/16,    -5/8 - 39*I/16,   2473/256 + 137*I/64,    -149/64 + 49*I/32,   -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert M.rank() == 4

def test_issue_17247_expression_blowup_27():
    M = Matrix([
        [    0, 1 - x, x + 1, 1 - x],
        [1 - x, x + 1,     0, x + 1],
        [    0, 1 - x, x + 1, 1 - x],
        [    0,     0,     1 - x, 0]])
    with dotprodsimp(True):
        P, J = M.jordan_form()
        assert P.expand() == Matrix(S('''[
            [    0,  4*x/(x**2 - 2*x + 1), -(-17*x**4 + 12*sqrt(2)*x**4 - 4*sqrt(2)*x**3 + 6*x**3 - 6*x - 4*sqrt(2)*x + 12*sqrt(2) + 17)/(-7*x**4 + 5*sqrt(2)*x**4 - 6*sqrt(2)*x**3 + 8*x**3 - 2*x**2 + 8*x + 6*sqrt(2)*x - 5*sqrt(2) - 7), -(12*sqrt(2)*x**4 + 17*x**4 - 6*x**3 - 4*sqrt(2)*x**3 - 4*sqrt(2)*x + 6*x - 17 + 12*sqrt(2))/(7*x**4 + 5*sqrt(2)*x**4 - 6*sqrt(2)*x**3 - 8*x**3 + 2*x**2 - 8*x + 6*sqrt(2)*x - 5*sqrt(2) + 7)],
            [x - 1, x/(x - 1) + 1/(x - 1),                       (-7*x**3 + 5*sqrt(2)*x**3 - x**2 + sqrt(2)*x**2 - sqrt(2)*x - x - 5*sqrt(2) - 7)/(-3*x**3 + 2*sqrt(2)*x**3 - 2*sqrt(2)*x**2 + 3*x**2 + 2*sqrt(2)*x + 3*x - 3 - 2*sqrt(2)),                       (7*x**3 + 5*sqrt(2)*x**3 + x**2 + sqrt(2)*x**2 - sqrt(2)*x + x - 5*sqrt(2) + 7)/(2*sqrt(2)*x**3 + 3*x**3 - 3*x**2 - 2*sqrt(2)*x**2 - 3*x + 2*sqrt(2)*x - 2*sqrt(2) + 3)],
            [    0,                     1,                                                                                            -(-3*x**2 + 2*sqrt(2)*x**2 + 2*x - 3 - 2*sqrt(2))/(-x**2 + sqrt(2)*x**2 - 2*sqrt(2)*x + 1 + sqrt(2)),                                                                                            -(2*sqrt(2)*x**2 + 3*x**2 - 2*x - 2*sqrt(2) + 3)/(x**2 + sqrt(2)*x**2 - 2*sqrt(2)*x - 1 + sqrt(2))],
            [1 - x,                     0,                                                                                                                                                                                               1,                                                                                                                                                                                             1]]''')).expand()
        assert J == Matrix(S('''[
            [0, 1,                       0,                       0],
            [0, 0,                       0,                       0],
            [0, 0, x - sqrt(2)*(x - 1) + 1,                       0],
            [0, 0,                       0, x + sqrt(2)*(x - 1) + 1]]'''))

def test_issue_17247_expression_blowup_28():
    M = Matrix(S('''[
        [             -3/4,       45/32 - 37*I/16,                   0,                     0],
        [-149/64 + 49*I/32, -177/128 - 1369*I/128,                   0, -2063/256 + 541*I/128],
        [                0,         9/4 + 55*I/16, 2473/256 + 137*I/64,                     0],
        [                0,                     0,                   0, -177/128 - 1369*I/128]]'''))
    with dotprodsimp(True):
        assert M.singular_values() == S('''[
            sqrt(14609315/131072 + sqrt(64789115132571/2147483648 - 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3) + 76627253330829751075/(35184372088832*sqrt(64789115132571/4294967296 + 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)) + 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3))) - 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)))/2 + sqrt(64789115132571/4294967296 + 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)) + 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3))/2),
            sqrt(14609315/131072 - sqrt(64789115132571/2147483648 - 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3) + 76627253330829751075/(35184372088832*sqrt(64789115132571/4294967296 + 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)) + 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3))) - 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)))/2 + sqrt(64789115132571/4294967296 + 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)) + 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3))/2),
            sqrt(14609315/131072 - sqrt(64789115132571/4294967296 + 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)) + 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3))/2 + sqrt(64789115132571/2147483648 - 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3) - 76627253330829751075/(35184372088832*sqrt(64789115132571/4294967296 + 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)) + 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3))) - 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)))/2),
            sqrt(14609315/131072 - sqrt(64789115132571/4294967296 + 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)) + 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3))/2 - sqrt(64789115132571/2147483648 - 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3) - 76627253330829751075/(35184372088832*sqrt(64789115132571/4294967296 + 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)) + 2*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3))) - 3546944054712886603889144627/(110680464442257309696*(25895222463957462655758224991455280215303/633825300114114700748351602688 + sqrt(1213909058710955930446995195883114969038524625997915131236390724543989220134670)*I/22282920707136844948184236032)**(1/3)))/2)]''')


def test_issue_16823():
    # This still needs to be fixed if not using dotprodsimp.
    M = Matrix(S('''[
        [1+I,-19/4+5/4*I,1/2-I,9/4+55/16*I,-3/4,45/32-37/16*I,1/4+1/2*I,-129/64-9/64*I,1/4-5/16*I,65/128+87/64*I,-9/32-1/16*I,183/256-97/128*I,3/64+13/64*I,-23/32-59/256*I,15/128-3/32*I,19/256+551/1024*I],
        [21/8+I,-537/64+143/16*I,-5/8-39/16*I,2473/256+137/64*I,-149/64+49/32*I,-177/128-1369/128*I,125/64+87/64*I,-2063/256+541/128*I,85/256-33/16*I,805/128+2415/512*I,-219/128+115/256*I,6301/4096-6609/1024*I,119/128+143/128*I,-10879/2048+4343/4096*I,129/256-549/512*I,42533/16384+29103/8192*I],
        [-2,17/4-13/2*I,1+I,-19/4+5/4*I,1/2-I,9/4+55/16*I,-3/4,45/32-37/16*I,1/4+1/2*I,-129/64-9/64*I,1/4-5/16*I,65/128+87/64*I,-9/32-1/16*I,183/256-97/128*I,3/64+13/64*I,-23/32-59/256*I],
        [1/4+13/4*I,-825/64-147/32*I,21/8+I,-537/64+143/16*I,-5/8-39/16*I,2473/256+137/64*I,-149/64+49/32*I,-177/128-1369/128*I,125/64+87/64*I,-2063/256+541/128*I,85/256-33/16*I,805/128+2415/512*I,-219/128+115/256*I,6301/4096-6609/1024*I,119/128+143/128*I,-10879/2048+4343/4096*I],
        [-4*I,27/2+6*I,-2,17/4-13/2*I,1+I,-19/4+5/4*I,1/2-I,9/4+55/16*I,-3/4,45/32-37/16*I,1/4+1/2*I,-129/64-9/64*I,1/4-5/16*I,65/128+87/64*I,-9/32-1/16*I,183/256-97/128*I],
        [1/4+5/2*I,-23/8-57/16*I,1/4+13/4*I,-825/64-147/32*I,21/8+I,-537/64+143/16*I,-5/8-39/16*I,2473/256+137/64*I,-149/64+49/32*I,-177/128-1369/128*I,125/64+87/64*I,-2063/256+541/128*I,85/256-33/16*I,805/128+2415/512*I,-219/128+115/256*I,6301/4096-6609/1024*I],
        [-4,9-5*I,-4*I,27/2+6*I,-2,17/4-13/2*I,1+I,-19/4+5/4*I,1/2-I,9/4+55/16*I,-3/4,45/32-37/16*I,1/4+1/2*I,-129/64-9/64*I,1/4-5/16*I,65/128+87/64*I],
        [-2*I,119/8+29/4*I,1/4+5/2*I,-23/8-57/16*I,1/4+13/4*I,-825/64-147/32*I,21/8+I,-537/64+143/16*I,-5/8-39/16*I,2473/256+137/64*I,-149/64+49/32*I,-177/128-1369/128*I,125/64+87/64*I,-2063/256+541/128*I,85/256-33/16*I,805/128+2415/512*I],
        [0,-6,-4,9-5*I,-4*I,27/2+6*I,-2,17/4-13/2*I,1+I,-19/4+5/4*I,1/2-I,9/4+55/16*I,-3/4,45/32-37/16*I,1/4+1/2*I,-129/64-9/64*I],
        [1,-9/4+3*I,-2*I,119/8+29/4*I,1/4+5/2*I,-23/8-57/16*I,1/4+13/4*I,-825/64-147/32*I,21/8+I,-537/64+143/16*I,-5/8-39/16*I,2473/256+137/64*I,-149/64+49/32*I,-177/128-1369/128*I,125/64+87/64*I,-2063/256+541/128*I],
        [0,-4*I,0,-6,-4,9-5*I,-4*I,27/2+6*I,-2,17/4-13/2*I,1+I,-19/4+5/4*I,1/2-I,9/4+55/16*I,-3/4,45/32-37/16*I],
        [0,1/4+1/2*I,1,-9/4+3*I,-2*I,119/8+29/4*I,1/4+5/2*I,-23/8-57/16*I,1/4+13/4*I,-825/64-147/32*I,21/8+I,-537/64+143/16*I,-5/8-39/16*I,2473/256+137/64*I,-149/64+49/32*I,-177/128-1369/128*I]]'''))
    with dotprodsimp(True):
        assert M.rank() == 8


def test_issue_18531():
    # solve_linear_system still needs fixing but the rref works.
    M = Matrix([
        [1, 1, 1, 1, 1, 0, 1, 0, 0],
        [1 + sqrt(2), -1 + sqrt(2), 1 - sqrt(2), -sqrt(2) - 1, 1, 1, -1, 1, 1],
        [-5 + 2*sqrt(2), -5 - 2*sqrt(2), -5 - 2*sqrt(2), -5 + 2*sqrt(2), -7, 2, -7, -2, 0],
        [-3*sqrt(2) - 1, 1 - 3*sqrt(2), -1 + 3*sqrt(2), 1 + 3*sqrt(2), -7, -5, 7, -5, 3],
        [7 - 4*sqrt(2), 4*sqrt(2) + 7, 4*sqrt(2) + 7, 7 - 4*sqrt(2), 7, -12, 7, 12, 0],
        [-1 + 3*sqrt(2), 1 + 3*sqrt(2), -3*sqrt(2) - 1, 1 - 3*sqrt(2), 7, -5, -7, -5, 3],
        [-3 + 2*sqrt(2), -3 - 2*sqrt(2), -3 - 2*sqrt(2), -3 + 2*sqrt(2), -1, 2, -1, -2, 0],
        [1 - sqrt(2), -sqrt(2) - 1, 1 + sqrt(2), -1 + sqrt(2), -1, 1, 1, 1, 1]
        ])
    with dotprodsimp(True):
        assert M.rref() == (Matrix([
            [1, 0, 0, 0, 0, 0, 0, 0,  S(1)/2],
            [0, 1, 0, 0, 0, 0, 0, 0, -S(1)/2],
            [0, 0, 1, 0, 0, 0, 0, 0,  S(1)/2],
            [0, 0, 0, 1, 0, 0, 0, 0, -S(1)/2],
            [0, 0, 0, 0, 1, 0, 0, 0,    0],
            [0, 0, 0, 0, 0, 1, 0, 0, -S(1)/2],
            [0, 0, 0, 0, 0, 0, 1, 0,    0],
            [0, 0, 0, 0, 0, 0, 0, 1, -S(1)/2]]), (0, 1, 2, 3, 4, 5, 6, 7))


def test_creation():
    raises(ValueError, lambda: Matrix(5, 5, range(20)))
    raises(ValueError, lambda: Matrix(5, -1, []))
    raises(IndexError, lambda: Matrix((1, 2))[2])
    with raises(IndexError):
        Matrix((1, 2))[3] = 5

    assert Matrix() == Matrix([]) == Matrix(0, 0, [])
    assert Matrix([[]]) == Matrix(1, 0, [])
    assert Matrix([[], []]) == Matrix(2, 0, [])

    # anything used to be allowed in a matrix
    with warns_deprecated_sympy():
        assert Matrix([[[1], (2,)]]).tolist() == [[[1], (2,)]]
    with warns_deprecated_sympy():
        assert Matrix([[[1], (2,)]]).T.tolist() == [[[1]], [(2,)]]
    M = Matrix([[0]])
    with warns_deprecated_sympy():
        M[0, 0] = S.EmptySet

    a = Matrix([[x, 0], [0, 0]])
    m = a
    assert m.cols == m.rows
    assert m.cols == 2
    assert m[:] == [x, 0, 0, 0]

    b = Matrix(2, 2, [x, 0, 0, 0])
    m = b
    assert m.cols == m.rows
    assert m.cols == 2
    assert m[:] == [x, 0, 0, 0]

    assert a == b

    assert Matrix(b) == b

    c23 = Matrix(2, 3, range(1, 7))
    c13 = Matrix(1, 3, range(7, 10))
    c = Matrix([c23, c13])
    assert c.cols == 3
    assert c.rows == 3
    assert c[:] == [1, 2, 3, 4, 5, 6, 7, 8, 9]

    assert Matrix(eye(2)) == eye(2)
    assert ImmutableMatrix(ImmutableMatrix(eye(2))) == ImmutableMatrix(eye(2))
    assert ImmutableMatrix(c) == c.as_immutable()
    assert Matrix(ImmutableMatrix(c)) == ImmutableMatrix(c).as_mutable()

    assert c is not Matrix(c)

    dat = [[ones(3,2), ones(3,3)*2], [ones(2,3)*3, ones(2,2)*4]]
    M = Matrix(dat)
    assert M == Matrix([
        [1, 1, 2, 2, 2],
        [1, 1, 2, 2, 2],
        [1, 1, 2, 2, 2],
        [3, 3, 3, 4, 4],
        [3, 3, 3, 4, 4]])
    assert M.tolist() != dat
    # keep block form if evaluate=False
    assert Matrix(dat, evaluate=False).tolist() == dat
    A = MatrixSymbol("A", 2, 2)
    dat = [ones(2), A]
    assert Matrix(dat) == Matrix([
    [      1,       1],
    [      1,       1],
    [A[0, 0], A[0, 1]],
    [A[1, 0], A[1, 1]]])
    with warns_deprecated_sympy():
        assert Matrix(dat, evaluate=False).tolist() == [[i] for i in dat]

    # 0-dim tolerance
    assert Matrix([ones(2), ones(0)]) == Matrix([ones(2)])
    raises(ValueError, lambda: Matrix([ones(2), ones(0, 3)]))
    raises(ValueError, lambda: Matrix([ones(2), ones(3, 0)]))

    # mix of Matrix and iterable
    M = Matrix([[1, 2], [3, 4]])
    M2 = Matrix([M, (5, 6)])
    assert M2 == Matrix([[1, 2], [3, 4], [5, 6]])


def test_irregular_block():
    assert Matrix.irregular(3, ones(2,1), ones(3,3)*2, ones(2,2)*3,
        ones(1,1)*4, ones(2,2)*5, ones(1,2)*6, ones(1,2)*7) == Matrix([
        [1, 2, 2, 2, 3, 3],
        [1, 2, 2, 2, 3, 3],
        [4, 2, 2, 2, 5, 5],
        [6, 6, 7, 7, 5, 5]])


def test_tolist():
    lst = [[S.One, S.Half, x*y, S.Zero], [x, y, z, x**2], [y, -S.One, z*x, 3]]
    m = Matrix(lst)
    assert m.tolist() == lst


def test_as_mutable():
    assert zeros(0, 3).as_mutable() == zeros(0, 3)
    assert zeros(0, 3).as_immutable() == ImmutableMatrix(zeros(0, 3))
    assert zeros(3, 0).as_immutable() == ImmutableMatrix(zeros(3, 0))


def test_slicing():
    m0 = eye(4)
    assert m0[:3, :3] == eye(3)
    assert m0[2:4, 0:2] == zeros(2)

    m1 = Matrix(3, 3, lambda i, j: i + j)
    assert m1[0, :] == Matrix(1, 3, (0, 1, 2))
    assert m1[1:3, 1] == Matrix(2, 1, (2, 3))

    m2 = Matrix([[0, 1, 2, 3], [4, 5, 6, 7], [8, 9, 10, 11], [12, 13, 14, 15]])
    assert m2[:, -1] == Matrix(4, 1, [3, 7, 11, 15])
    assert m2[-2:, :] == Matrix([[8, 9, 10, 11], [12, 13, 14, 15]])


def test_submatrix_assignment():
    m = zeros(4)
    m[2:4, 2:4] = eye(2)
    assert m == Matrix(((0, 0, 0, 0),
                        (0, 0, 0, 0),
                        (0, 0, 1, 0),
                        (0, 0, 0, 1)))
    m[:2, :2] = eye(2)
    assert m == eye(4)
    m[:, 0] = Matrix(4, 1, (1, 2, 3, 4))
    assert m == Matrix(((1, 0, 0, 0),
                        (2, 1, 0, 0),
                        (3, 0, 1, 0),
                        (4, 0, 0, 1)))
    m[:, :] = zeros(4)
    assert m == zeros(4)
    m[:, :] = [(1, 2, 3, 4), (5, 6, 7, 8), (9, 10, 11, 12), (13, 14, 15, 16)]
    assert m == Matrix(((1, 2, 3, 4),
                        (5, 6, 7, 8),
                        (9, 10, 11, 12),
                        (13, 14, 15, 16)))
    m[:2, 0] = [0, 0]
    assert m == Matrix(((0, 2, 3, 4),
                        (0, 6, 7, 8),
                        (9, 10, 11, 12),
                        (13, 14, 15, 16)))


def test_extract():
    m = Matrix(4, 3, lambda i, j: i*3 + j)
    assert m.extract([0, 1, 3], [0, 1]) == Matrix(3, 2, [0, 1, 3, 4, 9, 10])
    assert m.extract([0, 3], [0, 0, 2]) == Matrix(2, 3, [0, 0, 2, 9, 9, 11])
    assert m.extract(range(4), range(3)) == m
    raises(IndexError, lambda: m.extract([4], [0]))
    raises(IndexError, lambda: m.extract([0], [3]))


def test_reshape():
    m0 = eye(3)
    assert m0.reshape(1, 9) == Matrix(1, 9, (1, 0, 0, 0, 1, 0, 0, 0, 1))
    m1 = Matrix(3, 4, lambda i, j: i + j)
    assert m1.reshape(
        4, 3) == Matrix(((0, 1, 2), (3, 1, 2), (3, 4, 2), (3, 4, 5)))
    assert m1.reshape(2, 6) == Matrix(((0, 1, 2, 3, 1, 2), (3, 4, 2, 3, 4, 5)))


def test_applyfunc():
    m0 = eye(3)
    assert m0.applyfunc(lambda x: 2*x) == eye(3)*2
    assert m0.applyfunc(lambda x: 0) == zeros(3)


def test_expand():
    m0 = Matrix([[x*(x + y), 2], [((x + y)*y)*x, x*(y + x*(x + y))]])
    # Test if expand() returns a matrix
    m1 = m0.expand()
    assert m1 == Matrix(
        [[x*y + x**2, 2], [x*y**2 + y*x**2, x*y + y*x**2 + x**3]])

    a = Symbol('a', real=True)

    assert Matrix([exp(I*a)]).expand(complex=True) == \
        Matrix([cos(a) + I*sin(a)])

    assert Matrix([[0, 1, 2], [0, 0, -1], [0, 0, 0]]).exp() == Matrix([
        [1, 1, Rational(3, 2)],
        [0, 1, -1],
        [0, 0, 1]]
    )

def test_refine():
    m0 = Matrix([[Abs(x)**2, sqrt(x**2)],
                [sqrt(x**2)*Abs(y)**2, sqrt(y**2)*Abs(x)**2]])
    m1 = m0.refine(Q.real(x) & Q.real(y))
    assert m1 == Matrix([[x**2, Abs(x)], [y**2*Abs(x), x**2*Abs(y)]])

    m1 = m0.refine(Q.positive(x) & Q.positive(y))
    assert m1 == Matrix([[x**2, x], [x*y**2, x**2*y]])

    m1 = m0.refine(Q.negative(x) & Q.negative(y))
    assert m1 == Matrix([[x**2, -x], [-x*y**2, -x**2*y]])

def test_random():
    M = randMatrix(3, 3)
    M = randMatrix(3, 3, seed=3)
    assert M == randMatrix(3, 3, seed=3)

    M = randMatrix(3, 4, 0, 150)
    M = randMatrix(3, seed=4, symmetric=True)
    assert M == randMatrix(3, seed=4, symmetric=True)

    S = M.copy()
    S.simplify()
    assert S == M  # doesn't fail when elements are Numbers, not int

    rng = random.Random(4)
    assert M == randMatrix(3, symmetric=True, prng=rng)

    # Ensure symmetry
    for size in (10, 11): # Test odd and even
        for percent in (100, 70, 30):
            M = randMatrix(size, symmetric=True, percent=percent, prng=rng)
            assert M == M.T

    M = randMatrix(10, min=1, percent=70)
    zero_count = 0
    for i in range(M.shape[0]):
        for j in range(M.shape[1]):
            if M[i, j] == 0:
                zero_count += 1
    assert zero_count == 30

def test_inverse():
    A = eye(4)
    assert A.inv() == eye(4)
    assert A.inv(method="LU") == eye(4)
    assert A.inv(method="ADJ") == eye(4)
    assert A.inv(method="CH") == eye(4)
    assert A.inv(method="LDL") == eye(4)
    assert A.inv(method="QR") == eye(4)
    A = Matrix([[2, 3, 5],
                [3, 6, 2],
                [8, 3, 6]])
    Ainv = A.inv()
    assert A*Ainv == eye(3)
    assert A.inv(method="LU") == Ainv
    assert A.inv(method="ADJ") == Ainv
    assert A.inv(method="CH") == Ainv
    assert A.inv(method="LDL") == Ainv
    assert A.inv(method="QR") == Ainv

    AA = Matrix([[0, 0, 0, 0, 1, 0, 0, 1, 0, 1, 1, 1, 0, 0, 0, 1, 1, 0, 0, 0, 0, 1, 1, 0, 0],
            [1, 0, 1, 0, 0, 1, 0, 0, 1, 0, 1, 0, 1, 1, 1, 0, 1, 1, 0, 0, 0, 0, 0, 1, 0],
            [1, 1, 1, 1, 0, 1, 0, 0, 1, 1, 0, 0, 0, 1, 1, 1, 1, 0, 0, 1, 1, 0, 0, 1, 1],
            [1, 0, 0, 0, 0, 0, 1, 1, 0, 0, 1, 1, 1, 0, 0, 0, 0, 0, 0, 1, 0, 0, 1, 0, 0],
            [1, 0, 0, 1, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 1, 0, 1, 0, 0, 0, 1, 0, 0, 0],
            [1, 0, 0, 0, 0, 0, 0, 0, 1, 1, 1, 0, 1, 0, 1, 1, 1, 1, 0, 0, 0, 1, 1, 0, 1],
            [0, 1, 1, 1, 0, 0, 0, 0, 1, 1, 1, 0, 1, 0, 1, 0, 1, 0, 1, 0, 1, 0, 0, 1, 0],
            [1, 1, 0, 0, 0, 1, 1, 0, 0, 1, 1, 0, 1, 1, 0, 1, 1, 0, 1, 0, 1, 1, 0, 1, 1],
            [0, 0, 1, 1, 1, 0, 0, 1, 1, 0, 1, 1, 0, 1, 0, 0, 0, 0, 0, 0, 1, 0, 1, 0, 1],
            [1, 0, 1, 1, 1, 0, 1, 0, 0, 1, 1, 0, 1, 1, 0, 1, 1, 1, 1, 0, 1, 1, 1, 0, 0],
            [0, 1, 1, 0, 0, 0, 0, 1, 1, 0, 1, 0, 1, 0, 1, 1, 0, 0, 1, 0, 0, 0, 1, 1, 0],
            [1, 0, 0, 1, 0, 1, 0, 1, 1, 0, 0, 1, 0, 1, 0, 1, 0, 1, 0, 1, 0, 1, 1, 0, 0],
            [0, 1, 1, 0, 0, 1, 1, 0, 0, 1, 1, 0, 1, 0, 0, 0, 1, 0, 0, 1, 0, 1, 1, 0, 1],
            [1, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 0, 1, 1, 0, 0, 1, 1, 1, 0, 1, 0, 1, 1, 0],
            [0, 1, 0, 0, 0, 0, 1, 1, 0, 1, 1, 0, 0, 0, 0, 1, 0, 1, 1, 1, 0, 0, 1, 0, 0],
            [1, 1, 1, 1, 0, 1, 1, 1, 1, 1, 1, 0, 0, 0, 1, 0, 1, 0, 1, 0, 0, 1, 0, 0, 0],
            [0, 0, 0, 1, 0, 1, 1, 0, 1, 0, 0, 0, 0, 0, 1, 0, 1, 1, 0, 1, 0, 1, 1, 0, 1],
            [0, 1, 0, 1, 0, 0, 0, 0, 1, 1, 1, 0, 0, 1, 1, 1, 0, 0, 1, 0, 1, 1, 0, 1, 1],
            [1, 0, 1, 1, 0, 1, 0, 1, 1, 0, 1, 1, 1, 0, 1, 0, 0, 0, 0, 1, 0, 0, 1, 0, 1],
            [0, 0, 0, 1, 0, 0, 1, 1, 0, 1, 1, 0, 1, 0, 1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0],
            [1, 0, 0, 0, 0, 1, 0, 1, 0, 0, 1, 1, 0, 1, 0, 1, 1, 1, 1, 0, 1, 1, 1, 1, 1],
            [0, 0, 1, 1, 0, 1, 0, 0, 0, 1, 0, 0, 1, 0, 0, 1, 0, 0, 0, 1, 0, 1, 0, 1, 1],
            [0, 0, 0, 0, 0, 1, 1, 1, 0, 1, 1, 1, 0, 0, 0, 1, 0, 1, 1, 0, 1, 1, 0, 0, 0],
            [0, 0, 1, 0, 1, 1, 0, 1, 1, 1, 0, 0, 1, 0, 1, 0, 0, 1, 0, 1, 0, 0, 0, 0, 0],
            [0, 0, 0, 1, 1, 0, 1, 1, 1, 0, 0, 1, 0, 1, 0, 1, 1, 0, 1, 1, 1, 0, 0, 1, 0]])
    assert AA.inv(method="BLOCK") * AA == eye(AA.shape[0])
    # test that immutability is not a problem
    cls = ImmutableMatrix
    m = cls([[48, 49, 31],
             [ 9, 71, 94],
             [59, 28, 65]])
    assert all(type(m.inv(s)) is cls for s in 'GE ADJ LU CH LDL QR'.split())
    cls = ImmutableSparseMatrix
    m = cls([[48, 49, 31],
             [ 9, 71, 94],
             [59, 28, 65]])
    assert all(type(m.inv(s)) is cls for s in 'GE ADJ LU CH LDL QR'.split())


def test_jacobian_hessian():
    L = Matrix(1, 2, [x**2*y, 2*y**2 + x*y])
    syms = [x, y]
    assert L.jacobian(syms) == Matrix([[2*x*y, x**2], [y, 4*y + x]])

    L = Matrix(1, 2, [x, x**2*y**3])
    assert L.jacobian(syms) == Matrix([[1, 0], [2*x*y**3, x**2*3*y**2]])

    f = x**2*y
    syms = [x, y]
    assert hessian(f, syms) == Matrix([[2*y, 2*x], [2*x, 0]])

    f = x**2*y**3
    assert hessian(f, syms) == \
        Matrix([[2*y**3, 6*x*y**2], [6*x*y**2, 6*x**2*y]])

    f = z + x*y**2
    g = x**2 + 2*y**3
    ans = Matrix([[0,   2*y],
                  [2*y, 2*x]])
    assert ans == hessian(f, Matrix([x, y]))
    assert ans == hessian(f, Matrix([x, y]).T)
    assert hessian(f, (y, x), [g]) == Matrix([
        [     0, 6*y**2, 2*x],
        [6*y**2,    2*x, 2*y],
        [   2*x,    2*y,   0]])


def test_wronskian():
    assert wronskian([cos(x), sin(x)], x) == cos(x)**2 + sin(x)**2
    assert wronskian([exp(x), exp(2*x)], x) == exp(3*x)
    assert wronskian([exp(x), x], x) == exp(x) - x*exp(x)
    assert wronskian([1, x, x**2], x) == 2
    w1 = -6*exp(x)*sin(x)*x + 6*cos(x)*exp(x)*x**2 - 6*exp(x)*cos(x)*x - \
        exp(x)*cos(x)*x**3 + exp(x)*sin(x)*x**3
    assert wronskian([exp(x), cos(x), x**3], x).expand() == w1
    assert wronskian([exp(x), cos(x), x**3], x, method='berkowitz').expand() \
        == w1
    w2 = -x**3*cos(x)**2 - x**3*sin(x)**2 - 6*x*cos(x)**2 - 6*x*sin(x)**2
    assert wronskian([sin(x), cos(x), x**3], x).expand() == w2
    assert wronskian([sin(x), cos(x), x**3], x, method='berkowitz').expand() \
        == w2
    assert wronskian([], x) == 1


def test_subs():
    assert Matrix([[1, x], [x, 4]]).subs(x, 5) == Matrix([[1, 5], [5, 4]])
    assert Matrix([[x, 2], [x + y, 4]]).subs([[x, -1], [y, -2]]) == \
        Matrix([[-1, 2], [-3, 4]])
    assert Matrix([[x, 2], [x + y, 4]]).subs([(x, -1), (y, -2)]) == \
        Matrix([[-1, 2], [-3, 4]])
    assert Matrix([[x, 2], [x + y, 4]]).subs({x: -1, y: -2}) == \
        Matrix([[-1, 2], [-3, 4]])
    assert Matrix([x*y]).subs({x: y - 1, y: x - 1}, simultaneous=True) == \
        Matrix([(x - 1)*(y - 1)])

    for cls in classes:
        assert Matrix([[2, 0], [0, 2]]) == cls.eye(2).subs(1, 2)

def test_xreplace():
    assert Matrix([[1, x], [x, 4]]).xreplace({x: 5}) == \
        Matrix([[1, 5], [5, 4]])
    assert Matrix([[x, 2], [x + y, 4]]).xreplace({x: -1, y: -2}) == \
        Matrix([[-1, 2], [-3, 4]])
    for cls in classes:
        assert Matrix([[2, 0], [0, 2]]) == cls.eye(2).xreplace({1: 2})

def test_simplify():
    n = Symbol('n')
    f = Function('f')

    M = Matrix([[            1/x + 1/y,                 (x + x*y) / x  ],
                [ (f(x) + y*f(x))/f(x), 2 * (1/n - cos(n * pi)/n) / pi ]])
    M.simplify()
    assert M == Matrix([[ (x + y)/(x * y),                        1 + y ],
                        [           1 + y, 2*((1 - 1*cos(pi*n))/(pi*n)) ]])
    eq = (1 + x)**2
    M = Matrix([[eq]])
    M.simplify()
    assert M == Matrix([[eq]])
    M.simplify(ratio=oo)
    assert M == Matrix([[eq.simplify(ratio=oo)]])


def test_transpose():
    M = Matrix([[1, 2, 3, 4, 5, 6, 7, 8, 9, 0],
                [1, 2, 3, 4, 5, 6, 7, 8, 9, 0]])
    assert M.T == Matrix( [ [1, 1],
                            [2, 2],
                            [3, 3],
                            [4, 4],
                            [5, 5],
                            [6, 6],
                            [7, 7],
                            [8, 8],
                            [9, 9],
                            [0, 0] ])
    assert M.T.T == M
    assert M.T == M.transpose()


def test_conjugate():
    M = Matrix([[0, I, 5],
                [1, 2, 0]])

    assert M.T == Matrix([[0, 1],
                          [I, 2],
                          [5, 0]])

    assert M.C == Matrix([[0, -I, 5],
                          [1,  2, 0]])
    assert M.C == M.conjugate()

    assert M.H == M.T.C
    assert M.H == Matrix([[ 0, 1],
                          [-I, 2],
                          [ 5, 0]])


def test_conj_dirac():
    raises(AttributeError, lambda: eye(3).D)

    M = Matrix([[1, I, I, I],
                [0, 1, I, I],
                [0, 0, 1, I],
                [0, 0, 0, 1]])

    assert M.D == Matrix([[ 1,  0,  0,  0],
                          [-I,  1,  0,  0],
                          [-I, -I, -1,  0],
                          [-I, -I,  I, -1]])


def test_trace():
    M = Matrix([[1, 0, 0],
                [0, 5, 0],
                [0, 0, 8]])
    assert M.trace() == 14


def test_shape():
    M = Matrix([[x, 0, 0],
                [0, y, 0]])
    assert M.shape == (2, 3)


def test_col_row_op():
    M = Matrix([[x, 0, 0],
                [0, y, 0]])
    M.row_op(1, lambda r, j: r + j + 1)
    assert M == Matrix([[x,     0, 0],
                        [1, y + 2, 3]])

    M.col_op(0, lambda c, j: c + y**j)
    assert M == Matrix([[x + 1,     0, 0],
                        [1 + y, y + 2, 3]])

    # neither row nor slice give copies that allow the original matrix to
    # be changed
    assert M.row(0) == Matrix([[x + 1, 0, 0]])
    r1 = M.row(0)
    r1[0] = 42
    assert M[0, 0] == x + 1
    r1 = M[0, :-1]  # also testing negative slice
    r1[0] = 42
    assert M[0, 0] == x + 1
    c1 = M.col(0)
    assert c1 == Matrix([x + 1, 1 + y])
    c1[0] = 0
    assert M[0, 0] == x + 1
    c1 = M[:, 0]
    c1[0] = 42
    assert M[0, 0] == x + 1


def test_row_mult():
    M = Matrix([[1,2,3],
               [4,5,6]])
    M.row_mult(1,3)
    assert M[1,0] == 12
    assert M[0,0] == 1
    assert M[1,2] == 18


def test_row_add():
    M = Matrix([[1,2,3],
               [4,5,6],
               [1,1,1]])
    M.row_add(2,0,5)
    assert M[0,0] == 6
    assert M[1,0] == 4
    assert M[0,2] == 8


def test_zip_row_op():
    for cls in classes[:2]: # XXX: immutable matrices don't support row ops
        M = cls.eye(3)
        M.zip_row_op(1, 0, lambda v, u: v + 2*u)
        assert M == cls([[1, 0, 0],
                         [2, 1, 0],
                         [0, 0, 1]])

        M = cls.eye(3)*2
        M[0, 1] = -1
        M.zip_row_op(1, 0, lambda v, u: v + 2*u); M
        assert M == cls([[2, -1, 0],
                         [4,  0, 0],
                         [0,  0, 2]])

def test_issue_3950():
    m = Matrix([1, 2, 3])
    a = Matrix([1, 2, 3])
    b = Matrix([2, 2, 3])
    assert not (m in [])
    assert not (m in [1])
    assert m != 1
    assert m == a
    assert m != b


def test_issue_3981():
    class Index1:
        def __index__(self):
            return 1

    class Index2:
        def __index__(self):
            return 2
    index1 = Index1()
    index2 = Index2()

    m = Matrix([1, 2, 3])

    assert m[index2] == 3

    m[index2] = 5
    assert m[2] == 5

    m = Matrix([[1, 2, 3], [4, 5, 6]])
    assert m[index1, index2] == 6
    assert m[1, index2] == 6
    assert m[index1, 2] == 6

    m[index1, index2] = 4
    assert m[1, 2] == 4
    m[1, index2] = 6
    assert m[1, 2] == 6
    m[index1, 2] = 8
    assert m[1, 2] == 8


def test_evalf():
    a = Matrix([sqrt(5), 6])
    assert all(a.evalf()[i] == a[i].evalf() for i in range(2))
    assert all(a.evalf(2)[i] == a[i].evalf(2) for i in range(2))
    assert all(a.n(2)[i] == a[i].n(2) for i in range(2))


def test_is_symbolic():
    a = Matrix([[x, x], [x, x]])
    assert a.is_symbolic() is True
    a = Matrix([[1, 2, 3, 4], [5, 6, 7, 8]])
    assert a.is_symbolic() is False
    a = Matrix([[1, 2, 3, 4], [5, 6, x, 8]])
    assert a.is_symbolic() is True
    a = Matrix([[1, x, 3]])
    assert a.is_symbolic() is True
    a = Matrix([[1, 2, 3]])
    assert a.is_symbolic() is False
    a = Matrix([[1], [x], [3]])
    assert a.is_symbolic() is True
    a = Matrix([[1], [2], [3]])
    assert a.is_symbolic() is False


def test_is_upper():
    a = Matrix([[1, 2, 3]])
    assert a.is_upper is True
    a = Matrix([[1], [2], [3]])
    assert a.is_upper is False
    a = zeros(4, 2)
    assert a.is_upper is True


def test_is_lower():
    a = Matrix([[1, 2, 3]])
    assert a.is_lower is False
    a = Matrix([[1], [2], [3]])
    assert a.is_lower is True


def test_is_nilpotent():
    a = Matrix(4, 4, [0, 2, 1, 6, 0, 0, 1, 2, 0, 0, 0, 3, 0, 0, 0, 0])
    assert a.is_nilpotent()
    a = Matrix([[1, 0], [0, 1]])
    assert not a.is_nilpotent()
    a = Matrix([])
    assert a.is_nilpotent()


def test_zeros_ones_fill():
    n, m = 3, 5

    a = zeros(n, m)
    a.fill( 5 )

    b = 5 * ones(n, m)

    assert a == b
    assert a.rows == b.rows == 3
    assert a.cols == b.cols == 5
    assert a.shape == b.shape == (3, 5)
    assert zeros(2) == zeros(2, 2)
    assert ones(2) == ones(2, 2)
    assert zeros(2, 3) == Matrix(2, 3, [0]*6)
    assert ones(2, 3) == Matrix(2, 3, [1]*6)

    a.fill(0)
    assert a == zeros(n, m)


def test_empty_zeros():
    a = zeros(0)
    assert a == Matrix()
    a = zeros(0, 2)
    assert a.rows == 0
    assert a.cols == 2
    a = zeros(2, 0)
    assert a.rows == 2
    assert a.cols == 0


def test_issue_3749():
    a = Matrix([[x**2, x*y], [x*sin(y), x*cos(y)]])
    assert a.diff(x) == Matrix([[2*x, y], [sin(y), cos(y)]])
    assert Matrix([
        [x, -x, x**2],
        [exp(x), 1/x - exp(-x), x + 1/x]]).limit(x, oo) == \
        Matrix([[oo, -oo, oo], [oo, 0, oo]])
    assert Matrix([
        [(exp(x) - 1)/x, 2*x + y*x, x**x ],
        [1/x, abs(x), abs(sin(x + 1))]]).limit(x, 0) == \
        Matrix([[1, 0, 1], [oo, 0, sin(1)]])
    assert a.integrate(x) == Matrix([
        [Rational(1, 3)*x**3, y*x**2/2],
        [x**2*sin(y)/2, x**2*cos(y)/2]])


def test_inv_iszerofunc():
    A = eye(4)
    A.col_swap(0, 1)
    for method in "GE", "LU":
        assert A.inv(method=method, iszerofunc=lambda x: x == 0) == \
            A.inv(method="ADJ")


def test_jacobian_metrics():
    rho, phi = symbols("rho,phi")
    X = Matrix([rho*cos(phi), rho*sin(phi)])
    Y = Matrix([rho, phi])
    J = X.jacobian(Y)
    assert J == X.jacobian(Y.T)
    assert J == (X.T).jacobian(Y)
    assert J == (X.T).jacobian(Y.T)
    g = J.T*eye(J.shape[0])*J
    g = g.applyfunc(trigsimp)
    assert g == Matrix([[1, 0], [0, rho**2]])


def test_jacobian2():
    rho, phi = symbols("rho,phi")
    X = Matrix([rho*cos(phi), rho*sin(phi), rho**2])
    Y = Matrix([rho, phi])
    J = Matrix([
        [cos(phi), -rho*sin(phi)],
        [sin(phi),  rho*cos(phi)],
        [   2*rho,             0],
    ])
    assert X.jacobian(Y) == J


def test_issue_4564():
    X = Matrix([exp(x + y + z), exp(x + y + z), exp(x + y + z)])
    Y = Matrix([x, y, z])
    for i in range(1, 3):
        for j in range(1, 3):
            X_slice = X[:i, :]
            Y_slice = Y[:j, :]
            J = X_slice.jacobian(Y_slice)
            assert J.rows == i
            assert J.cols == j
            for k in range(j):
                assert J[:, k] == X_slice


def test_nonvectorJacobian():
    X = Matrix([[exp(x + y + z), exp(x + y + z)],
                [exp(x + y + z), exp(x + y + z)]])
    raises(TypeError, lambda: X.jacobian(Matrix([x, y, z])))
    X = X[0, :]
    Y = Matrix([[x, y], [x, z]])
    raises(TypeError, lambda: X.jacobian(Y))
    raises(TypeError, lambda: X.jacobian(Matrix([ [x, y], [x, z] ])))


def test_vec():
    m = Matrix([[1, 3], [2, 4]])
    m_vec = m.vec()
    assert m_vec.cols == 1
    for i in range(4):
        assert m_vec[i] == i + 1


def test_vech():
    m = Matrix([[1, 2], [2, 3]])
    m_vech = m.vech()
    assert m_vech.cols == 1
    for i in range(3):
        assert m_vech[i] == i + 1
    m_vech = m.vech(diagonal=False)
    assert m_vech[0] == 2

    m = Matrix([[1, x*(x + y)], [y*x + x**2, 1]])
    m_vech = m.vech(diagonal=False)
    assert m_vech[0] == y*x + x**2

    m = Matrix([[1, x*(x + y)], [y*x, 1]])
    m_vech = m.vech(diagonal=False, check_symmetry=False)
    assert m_vech[0] == y*x

    raises(ShapeError, lambda: Matrix([[1, 3]]).vech())
    raises(ValueError, lambda: Matrix([[1, 3], [2, 4]]).vech())
    raises(ShapeError, lambda: Matrix([[1, 3]]).vech())
    raises(ValueError, lambda: Matrix([[1, 3], [2, 4]]).vech())


def test_diag():
    # mostly tested in testcommonmatrix.py
    assert diag([1, 2, 3]) == Matrix([1, 2, 3])
    m = [1, 2, [3]]
    raises(ValueError, lambda: diag(m))
    assert diag(m, strict=False) == Matrix([1, 2, 3])


def test_get_diag_blocks1():
    a = Matrix([[1, 2], [2, 3]])
    b = Matrix([[3, x], [y, 3]])
    c = Matrix([[3, x, 3], [y, 3, z], [x, y, z]])
    assert a.get_diag_blocks() == [a]
    assert b.get_diag_blocks() == [b]
    assert c.get_diag_blocks() == [c]


def test_get_diag_blocks2():
    a = Matrix([[1, 2], [2, 3]])
    b = Matrix([[3, x], [y, 3]])
    c = Matrix([[3, x, 3], [y, 3, z], [x, y, z]])
    assert diag(a, b, b).get_diag_blocks() == [a, b, b]
    assert diag(a, b, c).get_diag_blocks() == [a, b, c]
    assert diag(a, c, b).get_diag_blocks() == [a, c, b]
    assert diag(c, c, b).get_diag_blocks() == [c, c, b]


def test_inv_block():
    a = Matrix([[1, 2], [2, 3]])
    b = Matrix([[3, x], [y, 3]])
    c = Matrix([[3, x, 3], [y, 3, z], [x, y, z]])
    A = diag(a, b, b)
    assert A.inv(try_block_diag=True) == diag(a.inv(), b.inv(), b.inv())
    A = diag(a, b, c)
    assert A.inv(try_block_diag=True) == diag(a.inv(), b.inv(), c.inv())
    A = diag(a, c, b)
    assert A.inv(try_block_diag=True) == diag(a.inv(), c.inv(), b.inv())
    A = diag(a, a, b, a, c, a)
    assert A.inv(try_block_diag=True) == diag(
        a.inv(), a.inv(), b.inv(), a.inv(), c.inv(), a.inv())
    assert A.inv(try_block_diag=True, method="ADJ") == diag(
        a.inv(method="ADJ"), a.inv(method="ADJ"), b.inv(method="ADJ"),
        a.inv(method="ADJ"), c.inv(method="ADJ"), a.inv(method="ADJ"))


def test_creation_args():
    """
    Check that matrix dimensions can be specified using any reasonable type
    (see issue 4614).
    """
    raises(ValueError, lambda: zeros(3, -1))
    raises(TypeError, lambda: zeros(1, 2, 3, 4))
    assert zeros(int(3)) == zeros(3)
    assert zeros(Integer(3)) == zeros(3)
    raises(ValueError, lambda: zeros(3.))
    assert eye(int(3)) == eye(3)
    assert eye(Integer(3)) == eye(3)
    raises(ValueError, lambda: eye(3.))
    assert ones(int(3), Integer(4)) == ones(3, 4)
    raises(TypeError, lambda: Matrix(5))
    raises(TypeError, lambda: Matrix(1, 2))
    raises(ValueError, lambda: Matrix([1, [2]]))


def test_diagonal_symmetrical():
    m = Matrix(2, 2, [0, 1, 1, 0])
    assert not m.is_diagonal()
    assert m.is_symmetric()
    assert m.is_symmetric(simplify=False)

    m = Matrix(2, 2, [1, 0, 0, 1])
    assert m.is_diagonal()

    m = diag(1, 2, 3)
    assert m.is_diagonal()
    assert m.is_symmetric()

    m = Matrix(3, 3, [1, 0, 0, 0, 2, 0, 0, 0, 3])
    assert m == diag(1, 2, 3)

    m = Matrix(2, 3, zeros(2, 3))
    assert not m.is_symmetric()
    assert m.is_diagonal()

    m = Matrix(((5, 0), (0, 6), (0, 0)))
    assert m.is_diagonal()

    m = Matrix(((5, 0, 0), (0, 6, 0)))
    assert m.is_diagonal()

    m = Matrix(3, 3, [1, x**2 + 2*x + 1, y, (x + 1)**2, 2, 0, y, 0, 3])
    assert m.is_symmetric()
    assert not m.is_symmetric(simplify=False)
    assert m.expand().is_symmetric(simplify=False)


def test_diagonalization():
    m = Matrix([[1, 2+I], [2-I, 3]])
    assert m.is_diagonalizable()

    m = Matrix(3, 2, [-3, 1, -3, 20, 3, 10])
    assert not m.is_diagonalizable()
    assert not m.is_symmetric()
    raises(NonSquareMatrixError, lambda: m.diagonalize())

    # diagonalizable
    m = diag(1, 2, 3)
    (P, D) = m.diagonalize()
    assert P == eye(3)
    assert D == m

    m = Matrix(2, 2, [0, 1, 1, 0])
    assert m.is_symmetric()
    assert m.is_diagonalizable()
    (P, D) = m.diagonalize()
    assert P.inv() * m * P == D

    m = Matrix(2, 2, [1, 0, 0, 3])
    assert m.is_symmetric()
    assert m.is_diagonalizable()
    (P, D) = m.diagonalize()
    assert P.inv() * m * P == D
    assert P == eye(2)
    assert D == m

    m = Matrix(2, 2, [1, 1, 0, 0])
    assert m.is_diagonalizable()
    (P, D) = m.diagonalize()
    assert P.inv() * m * P == D

    m = Matrix(3, 3, [1, 2, 0, 0, 3, 0, 2, -4, 2])
    assert m.is_diagonalizable()
    (P, D) = m.diagonalize()
    assert P.inv() * m * P == D
    for i in P:
        assert i.as_numer_denom()[1] == 1

    m = Matrix(2, 2, [1, 0, 0, 0])
    assert m.is_diagonal()
    assert m.is_diagonalizable()
    (P, D) = m.diagonalize()
    assert P.inv() * m * P == D
    assert P == Matrix([[0, 1], [1, 0]])

    # diagonalizable, complex only
    m = Matrix(2, 2, [0, 1, -1, 0])
    assert not m.is_diagonalizable(True)
    raises(MatrixError, lambda: m.diagonalize(True))
    assert m.is_diagonalizable()
    (P, D) = m.diagonalize()
    assert P.inv() * m * P == D

    # not diagonalizable
    m = Matrix(2, 2, [0, 1, 0, 0])
    assert not m.is_diagonalizable()
    raises(MatrixError, lambda: m.diagonalize())

    m = Matrix(3, 3, [-3, 1, -3, 20, 3, 10, 2, -2, 4])
    assert not m.is_diagonalizable()
    raises(MatrixError, lambda: m.diagonalize())

    # symbolic
    a, b, c, d = symbols('a b c d')
    m = Matrix(2, 2, [a, c, c, b])
    assert m.is_symmetric()
    assert m.is_diagonalizable()


def test_issue_15887():
    # Mutable matrix should not use cache
    a = MutableDenseMatrix([[0, 1], [1, 0]])
    assert a.is_diagonalizable() is True
    a[1, 0] = 0
    assert a.is_diagonalizable() is False

    a = MutableDenseMatrix([[0, 1], [1, 0]])
    a.diagonalize()
    a[1, 0] = 0
    raises(MatrixError, lambda: a.diagonalize())


def test_jordan_form():

    m = Matrix(3, 2, [-3, 1, -3, 20, 3, 10])
    raises(NonSquareMatrixError, lambda: m.jordan_form())

    # diagonalizable
    m = Matrix(3, 3, [7, -12, 6, 10, -19, 10, 12, -24, 13])
    Jmust = Matrix(3, 3, [-1, 0, 0, 0, 1, 0, 0, 0, 1])
    P, J = m.jordan_form()
    assert Jmust == J
    assert Jmust == m.diagonalize()[1]

    # m = Matrix(3, 3, [0, 6, 3, 1, 3, 1, -2, 2, 1])
    # m.jordan_form()  # very long
    # m.jordan_form()  #

    # diagonalizable, complex only

    # Jordan cells
    # complexity: one of eigenvalues is zero
    m = Matrix(3, 3, [0, 1, 0, -4, 4, 0, -2, 1, 2])
    # The blocks are ordered according to the value of their eigenvalues,
    # in order to make the matrix compatible with .diagonalize()
    Jmust = Matrix(3, 3, [2, 1, 0, 0, 2, 0, 0, 0, 2])
    P, J = m.jordan_form()
    assert Jmust == J

    # complexity: all of eigenvalues are equal
    m = Matrix(3, 3, [2, 6, -15, 1, 1, -5, 1, 2, -6])
    # Jmust = Matrix(3, 3, [-1, 0, 0, 0, -1, 1, 0, 0, -1])
    # same here see 1456ff
    Jmust = Matrix(3, 3, [-1, 1, 0, 0, -1, 0, 0, 0, -1])
    P, J = m.jordan_form()
    assert Jmust == J

    # complexity: two of eigenvalues are zero
    m = Matrix(3, 3, [4, -5, 2, 5, -7, 3, 6, -9, 4])
    Jmust = Matrix(3, 3, [1, 0, 0, 0, 0, 1, 0, 0, 0])
    P, J = m.jordan_form()
    assert Jmust == J

    m = Matrix(4, 4, [6, 5, -2, -3, -3, -1, 3, 3, 2, 1, -2, -3, -1, 1, 5, 5])
    Jmust = Matrix(4, 4, [2, 1, 0, 0,
                          0, 2, 0, 0,
              0, 0, 2, 1,
              0, 0, 0, 2]
              )
    P, J = m.jordan_form()
    assert Jmust == J

    m = Matrix(4, 4, [6, 2, -8, -6, -3, 2, 9, 6, 2, -2, -8, -6, -1, 0, 3, 4])
    # Jmust = Matrix(4, 4, [2, 0, 0, 0, 0, 2, 1, 0, 0, 0, 2, 0, 0, 0, 0, -2])
    # same here see 1456ff
    Jmust = Matrix(4, 4, [-2, 0, 0, 0,
                           0, 2, 1, 0,
                           0, 0, 2, 0,
                           0, 0, 0, 2])
    P, J = m.jordan_form()
    assert Jmust == J

    m = Matrix(4, 4, [5, 4, 2, 1, 0, 1, -1, -1, -1, -1, 3, 0, 1, 1, -1, 2])
    assert not m.is_diagonalizable()
    Jmust = Matrix(4, 4, [2, 0, 0, 0, 0, 1, 0, 0, 0, 0, 4, 1, 0, 0, 0, 4])
    P, J = m.jordan_form()
    assert Jmust == J

    # checking for maximum precision to remain unchanged
    m = Matrix([[Float('1.0', precision=110), Float('2.0', precision=110)],
                [Float('3.14159265358979323846264338327', precision=110), Float('4.0', precision=110)]])
    P, J = m.jordan_form()
    for term in J.values():
        if isinstance(term, Float):
            assert term._prec == 110


def test_jordan_form_complex_issue_9274():
    A = Matrix([[ 2,  4,  1,  0],
                [-4,  2,  0,  1],
                [ 0,  0,  2,  4],
                [ 0,  0, -4,  2]])
    p = 2 - 4*I
    q = 2 + 4*I
    Jmust1 = Matrix([[p, 1, 0, 0],
                     [0, p, 0, 0],
                     [0, 0, q, 1],
                     [0, 0, 0, q]])
    Jmust2 = Matrix([[q, 1, 0, 0],
                     [0, q, 0, 0],
                     [0, 0, p, 1],
                     [0, 0, 0, p]])
    P, J = A.jordan_form()
    assert J == Jmust1 or J == Jmust2
    assert simplify(P*J*P.inv()) == A

def test_issue_10220():
    # two non-orthogonal Jordan blocks with eigenvalue 1
    M = Matrix([[1, 0, 0, 1],
                [0, 1, 1, 0],
                [0, 0, 1, 1],
                [0, 0, 0, 1]])
    P, J = M.jordan_form()
    assert P == Matrix([[0, 1, 0, 1],
                        [1, 0, 0, 0],
                        [0, 1, 0, 0],
                        [0, 0, 1, 0]])
    assert J == Matrix([
                        [1, 1, 0, 0],
                        [0, 1, 1, 0],
                        [0, 0, 1, 0],
                        [0, 0, 0, 1]])

def test_jordan_form_issue_15858():
    A = Matrix([
        [1, 1, 1, 0],
        [-2, -1, 0, -1],
        [0, 0, -1, -1],
        [0, 0, 2, 1]])
    (P, J) = A.jordan_form()
    assert P.expand() == Matrix([
        [   -8,      -4,     -8,      -4],
        [8 + 8*I,      0, 8 - 8*I,      0],
        [    0, -4 + 4*I,     0, -4 - 4*I],
        [    0,    -8*I,     0,     8*I]
    ])
    assert J == Matrix([
        [-I, 1, 0, 0],
        [0, -I, 0, 0],
        [0, 0, I, 1],
        [0, 0, 0, I]])

def test_Matrix_berkowitz_charpoly():
    UA, K_i, K_w = symbols('UA K_i K_w')

    A = Matrix([[-K_i - UA + K_i**2/(K_i + K_w),       K_i*K_w/(K_i + K_w)],
                [           K_i*K_w/(K_i + K_w), -K_w + K_w**2/(K_i + K_w)]])

    charpoly = A.charpoly(x)

    assert charpoly == \
        Poly(x**2 + (K_i*UA + K_w*UA + 2*K_i*K_w)/(K_i + K_w)*x +
        K_i*K_w*UA/(K_i + K_w), x, domain='ZZ(K_i,K_w,UA)')

    assert type(charpoly) is PurePoly

    A = Matrix([[1, 3], [2, 0]])
    assert A.charpoly() == A.charpoly(x) == PurePoly(x**2 - x - 6)

    A = Matrix([[1, 2], [x, 0]])
    p = A.charpoly(x)
    assert p.gen != x
    assert p.as_expr().subs(p.gen, x) == x**2 - 3*x


def test_exp_jordan_block():
    l = Symbol('lamda')

    m = Matrix.jordan_block(1, l)
    assert m._eval_matrix_exp_jblock() == Matrix([[exp(l)]])

    m = Matrix.jordan_block(3, l)
    assert m._eval_matrix_exp_jblock() == \
        Matrix([
            [exp(l), exp(l), exp(l)/2],
            [0, exp(l), exp(l)],
            [0, 0, exp(l)]])


def test_exp():
    m = Matrix([[3, 4], [0, -2]])
    m_exp = Matrix([[exp(3), -4*exp(-2)/5 + 4*exp(3)/5], [0, exp(-2)]])
    assert m.exp() == m_exp
    assert exp(m) == m_exp

    m = Matrix([[1, 0], [0, 1]])
    assert m.exp() == Matrix([[E, 0], [0, E]])
    assert exp(m) == Matrix([[E, 0], [0, E]])

    m = Matrix([[1, -1], [1, 1]])
    assert m.exp() == Matrix([[E*cos(1), -E*sin(1)], [E*sin(1), E*cos(1)]])


def test_log():
    l = Symbol('lamda')

    m = Matrix.jordan_block(1, l)
    assert m._eval_matrix_log_jblock() == Matrix([[log(l)]])

    m = Matrix.jordan_block(4, l)
    assert m._eval_matrix_log_jblock() == \
        Matrix(
            [
                [log(l), 1/l, -1/(2*l**2), 1/(3*l**3)],
                [0, log(l), 1/l, -1/(2*l**2)],
                [0, 0, log(l), 1/l],
                [0, 0, 0, log(l)]
            ]
        )

    m = Matrix(
        [[0, 0, 1],
        [0, 0, 0],
        [-1, 0, 0]]
    )
    raises(MatrixError, lambda: m.log())


def test_has():
    A = Matrix(((x, y), (2, 3)))
    assert A.has(x)
    assert not A.has(z)
    assert A.has(Symbol)

    A = A.subs(x, 2)
    assert not A.has(x)


def test_find_reasonable_pivot_naive_finds_guaranteed_nonzero1():
    # Test if matrices._find_reasonable_pivot_naive()
    # finds a guaranteed non-zero pivot when the
    # some of the candidate pivots are symbolic expressions.
    # Keyword argument: simpfunc=None indicates that no simplifications
    # should be performed during the search.
    x = Symbol('x')
    column = Matrix(3, 1, [x, cos(x)**2 + sin(x)**2, S.Half])
    pivot_offset, pivot_val, pivot_assumed_nonzero, simplified =\
        _find_reasonable_pivot_naive(column)
    assert pivot_val == S.Half

def test_find_reasonable_pivot_naive_finds_guaranteed_nonzero2():
    # Test if matrices._find_reasonable_pivot_naive()
    # finds a guaranteed non-zero pivot when the
    # some of the candidate pivots are symbolic expressions.
    # Keyword argument: simpfunc=_simplify indicates that the search
    # should attempt to simplify candidate pivots.
    x = Symbol('x')
    column = Matrix(3, 1,
                    [x,
                     cos(x)**2+sin(x)**2+x**2,
                     cos(x)**2+sin(x)**2])
    pivot_offset, pivot_val, pivot_assumed_nonzero, simplified =\
        _find_reasonable_pivot_naive(column, simpfunc=_simplify)
    assert pivot_val == 1

def test_find_reasonable_pivot_naive_simplifies():
    # Test if matrices._find_reasonable_pivot_naive()
    # simplifies candidate pivots, and reports
    # their offsets correctly.
    x = Symbol('x')
    column = Matrix(3, 1,
                    [x,
                     cos(x)**2+sin(x)**2+x,
                     cos(x)**2+sin(x)**2])
    pivot_offset, pivot_val, pivot_assumed_nonzero, simplified =\
        _find_reasonable_pivot_naive(column, simpfunc=_simplify)

    assert len(simplified) == 2
    assert simplified[0][0] == 1
    assert simplified[0][1] == 1+x
    assert simplified[1][0] == 2
    assert simplified[1][1] == 1

def test_errors():
    raises(ValueError, lambda: Matrix([[1, 2], [1]]))
    raises(IndexError, lambda: Matrix([[1, 2]])[1.2, 5])
    raises(IndexError, lambda: Matrix([[1, 2]])[1, 5.2])
    raises(ValueError, lambda: randMatrix(3, c=4, symmetric=True))
    raises(ValueError, lambda: Matrix([1, 2]).reshape(4, 6))
    raises(ShapeError,
        lambda: Matrix([[1, 2], [3, 4]]).copyin_matrix([1, 0], Matrix([1, 2])))
    raises(TypeError, lambda: Matrix([[1, 2], [3, 4]]).copyin_list([0,
           1], set()))
    raises(NonSquareMatrixError, lambda: Matrix([[1, 2, 3], [2, 3, 0]]).inv())
    raises(ShapeError,
        lambda: Matrix(1, 2, [1, 2]).row_join(Matrix([[1, 2], [3, 4]])))
    raises(
        ShapeError, lambda: Matrix([1, 2]).col_join(Matrix([[1, 2], [3, 4]])))
    raises(ShapeError, lambda: Matrix([1]).row_insert(1, Matrix([[1,
           2], [3, 4]])))
    raises(ShapeError, lambda: Matrix([1]).col_insert(1, Matrix([[1,
           2], [3, 4]])))
    raises(NonSquareMatrixError, lambda: Matrix([1, 2]).trace())
    raises(TypeError, lambda: Matrix([1]).applyfunc(1))
    raises(ValueError, lambda: Matrix([[1, 2], [3, 4]]).minor(4, 5))
    raises(ValueError, lambda: Matrix([[1, 2], [3, 4]]).minor_submatrix(4, 5))
    raises(TypeError, lambda: Matrix([1, 2, 3]).cross(1))
    raises(TypeError, lambda: Matrix([1, 2, 3]).dot(1))
    raises(ShapeError, lambda: Matrix([1, 2, 3]).dot(Matrix([1, 2])))
    raises(ShapeError, lambda: Matrix([1, 2]).dot([]))
    raises(TypeError, lambda: Matrix([1, 2]).dot('a'))
    raises(ShapeError, lambda: Matrix([1, 2]).dot([1, 2, 3]))
    raises(NonSquareMatrixError, lambda: Matrix([1, 2, 3]).exp())
    raises(ShapeError, lambda: Matrix([[1, 2], [3, 4]]).normalized())
    raises(ValueError, lambda: Matrix([1, 2]).inv(method='not a method'))
    raises(NonSquareMatrixError, lambda: Matrix([1, 2]).inverse_GE())
    raises(ValueError, lambda: Matrix([[1, 2], [1, 2]]).inverse_GE())
    raises(NonSquareMatrixError, lambda: Matrix([1, 2]).inverse_ADJ())
    raises(ValueError, lambda: Matrix([[1, 2], [1, 2]]).inverse_ADJ())
    raises(NonSquareMatrixError, lambda: Matrix([1, 2]).inverse_LU())
    raises(NonSquareMatrixError, lambda: Matrix([1, 2]).is_nilpotent())
    raises(NonSquareMatrixError, lambda: Matrix([1, 2]).det())
    raises(ValueError,
        lambda: Matrix([[1, 2], [3, 4]]).det(method='Not a real method'))
    raises(ValueError,
        lambda: Matrix([[1, 2, 3, 4], [5, 6, 7, 8],
        [9, 10, 11, 12], [13, 14, 15, 16]]).det(iszerofunc="Not function"))
    raises(ValueError,
        lambda: Matrix([[1, 2, 3, 4], [5, 6, 7, 8],
        [9, 10, 11, 12], [13, 14, 15, 16]]).det(iszerofunc=False))
    raises(ValueError,
        lambda: hessian(Matrix([[1, 2], [3, 4]]), Matrix([[1, 2], [2, 1]])))
    raises(ValueError, lambda: hessian(Matrix([[1, 2], [3, 4]]), []))
    raises(ValueError, lambda: hessian(Symbol('x')**2, 'a'))
    raises(IndexError, lambda: eye(3)[5, 2])
    raises(IndexError, lambda: eye(3)[2, 5])
    M = Matrix(((1, 2, 3, 4), (5, 6, 7, 8), (9, 10, 11, 12), (13, 14, 15, 16)))
    raises(ValueError, lambda: M.det('method=LU_decomposition()'))
    V = Matrix([[10, 10, 10]])
    M = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    raises(ValueError, lambda: M.row_insert(4.7, V))
    M = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    raises(ValueError, lambda: M.col_insert(-4.2, V))

def test_len():
    assert len(Matrix()) == 0
    assert len(Matrix([[1, 2]])) == len(Matrix([[1], [2]])) == 2
    assert len(Matrix(0, 2, lambda i, j: 0)) == \
        len(Matrix(2, 0, lambda i, j: 0)) == 0
    assert len(Matrix([[0, 1, 2], [3, 4, 5]])) == 6
    assert Matrix([1]) == Matrix([[1]])
    assert not Matrix()
    assert Matrix() == Matrix([])


def test_integrate():
    A = Matrix(((1, 4, x), (y, 2, 4), (10, 5, x**2)))
    assert A.integrate(x) == \
        Matrix(((x, 4*x, x**2/2), (x*y, 2*x, 4*x), (10*x, 5*x, x**3/3)))
    assert A.integrate(y) == \
        Matrix(((y, 4*y, x*y), (y**2/2, 2*y, 4*y), (10*y, 5*y, y*x**2)))


def test_limit():
    A = Matrix(((1, 4, sin(x)/x), (y, 2, 4), (10, 5, x**2 + 1)))
    assert A.limit(x, 0) == Matrix(((1, 4, 1), (y, 2, 4), (10, 5, 1)))


def test_diff():
    A = MutableDenseMatrix(((1, 4, x), (y, 2, 4), (10, 5, x**2 + 1)))
    assert isinstance(A.diff(x), type(A))
    assert A.diff(x) == MutableDenseMatrix(((0, 0, 1), (0, 0, 0), (0, 0, 2*x)))
    assert A.diff(y) == MutableDenseMatrix(((0, 0, 0), (1, 0, 0), (0, 0, 0)))

    assert diff(A, x) == MutableDenseMatrix(((0, 0, 1), (0, 0, 0), (0, 0, 2*x)))
    assert diff(A, y) == MutableDenseMatrix(((0, 0, 0), (1, 0, 0), (0, 0, 0)))

    A_imm = A.as_immutable()
    assert isinstance(A_imm.diff(x), type(A_imm))
    assert A_imm.diff(x) == ImmutableDenseMatrix(((0, 0, 1), (0, 0, 0), (0, 0, 2*x)))
    assert A_imm.diff(y) == ImmutableDenseMatrix(((0, 0, 0), (1, 0, 0), (0, 0, 0)))

    assert diff(A_imm, x) == ImmutableDenseMatrix(((0, 0, 1), (0, 0, 0), (0, 0, 2*x)))
    assert diff(A_imm, y) == ImmutableDenseMatrix(((0, 0, 0), (1, 0, 0), (0, 0, 0)))

    assert A.diff(x, evaluate=False) == ArrayDerivative(A, x, evaluate=False)
    assert diff(A, x, evaluate=False) == ArrayDerivative(A, x, evaluate=False)


def test_diff_by_matrix():

    # Derive matrix by matrix:

    A = MutableDenseMatrix([[x, y], [z, t]])
    assert A.diff(A) == Array([[[[1, 0], [0, 0]], [[0, 1], [0, 0]]], [[[0, 0], [1, 0]], [[0, 0], [0, 1]]]])
    assert diff(A, A) == Array([[[[1, 0], [0, 0]], [[0, 1], [0, 0]]], [[[0, 0], [1, 0]], [[0, 0], [0, 1]]]])

    A_imm = A.as_immutable()
    assert A_imm.diff(A_imm) == Array([[[[1, 0], [0, 0]], [[0, 1], [0, 0]]], [[[0, 0], [1, 0]], [[0, 0], [0, 1]]]])
    assert diff(A_imm, A_imm) == Array([[[[1, 0], [0, 0]], [[0, 1], [0, 0]]], [[[0, 0], [1, 0]], [[0, 0], [0, 1]]]])

    # Derive a constant matrix:
    assert A.diff(a) == MutableDenseMatrix([[0, 0], [0, 0]])

    B = ImmutableDenseMatrix([a, b])
    assert A.diff(B) == Array.zeros(2, 1, 2, 2)
    assert A.diff(A) == Array([[[[1, 0], [0, 0]], [[0, 1], [0, 0]]], [[[0, 0], [1, 0]], [[0, 0], [0, 1]]]])

    # Test diff with tuples:

    dB = B.diff([[a, b]])
    assert dB.shape == (2, 2, 1)
    assert dB == Array([[[1], [0]], [[0], [1]]])

    f = Function("f")
    fxyz = f(x, y, z)
    assert fxyz.diff([[x, y, z]]) == Array([fxyz.diff(x), fxyz.diff(y), fxyz.diff(z)])
    assert fxyz.diff(([x, y, z], 2)) == Array([
        [fxyz.diff(x, 2), fxyz.diff(x, y), fxyz.diff(x, z)],
        [fxyz.diff(x, y), fxyz.diff(y, 2), fxyz.diff(y, z)],
        [fxyz.diff(x, z), fxyz.diff(z, y), fxyz.diff(z, 2)],
    ])

    expr = sin(x)*exp(y)
    assert expr.diff([[x, y]]) == Array([cos(x)*exp(y), sin(x)*exp(y)])
    assert expr.diff(y, ((x, y),)) == Array([cos(x)*exp(y), sin(x)*exp(y)])
    assert expr.diff(x, ((x, y),)) == Array([-sin(x)*exp(y), cos(x)*exp(y)])
    assert expr.diff(((y, x),), [[x, y]]) == Array([[cos(x)*exp(y), -sin(x)*exp(y)], [sin(x)*exp(y), cos(x)*exp(y)]])

    # Test different notations:

    assert fxyz.diff(x).diff(y).diff(x) == fxyz.diff(((x, y, z),), 3)[0, 1, 0]
    assert fxyz.diff(z).diff(y).diff(x) == fxyz.diff(((x, y, z),), 3)[2, 1, 0]
    assert fxyz.diff([[x, y, z]], ((z, y, x),)) == Array([[fxyz.diff(i).diff(j) for i in (x, y, z)] for j in (z, y, x)])

    # Test scalar derived by matrix remains matrix:
    res = x.diff(Matrix([[x, y]]))
    assert isinstance(res, ImmutableDenseMatrix)
    assert res == Matrix([[1, 0]])
    res = (x**3).diff(Matrix([[x, y]]))
    assert isinstance(res, ImmutableDenseMatrix)
    assert res == Matrix([[3*x**2, 0]])


def test_getattr():
    A = Matrix(((1, 4, x), (y, 2, 4), (10, 5, x**2 + 1)))
    raises(AttributeError, lambda: A.nonexistantattribute)
    assert getattr(A, 'diff')(x) == Matrix(((0, 0, 1), (0, 0, 0), (0, 0, 2*x)))


def test_hessenberg():
    A = Matrix([[3, 4, 1], [2, 4, 5], [0, 1, 2]])
    assert A.is_upper_hessenberg
    A = A.T
    assert A.is_lower_hessenberg
    A[0, -1] = 1
    assert A.is_lower_hessenberg is False

    A = Matrix([[3, 4, 1], [2, 4, 5], [3, 1, 2]])
    assert not A.is_upper_hessenberg

    A = zeros(5, 2)
    assert A.is_upper_hessenberg


def test_cholesky():
    raises(NonSquareMatrixError, lambda: Matrix((1, 2)).cholesky())
    raises(ValueError, lambda: Matrix(((1, 2), (3, 4))).cholesky())
    raises(ValueError, lambda: Matrix(((5 + I, 0), (0, 1))).cholesky())
    raises(ValueError, lambda: Matrix(((1, 5), (5, 1))).cholesky())
    raises(ValueError, lambda: Matrix(((1, 2), (3, 4))).cholesky(hermitian=False))
    assert Matrix(((5 + I, 0), (0, 1))).cholesky(hermitian=False) == Matrix([
        [sqrt(5 + I), 0], [0, 1]])
    A = Matrix(((1, 5), (5, 1)))
    L = A.cholesky(hermitian=False)
    assert L == Matrix([[1, 0], [5, 2*sqrt(6)*I]])
    assert L*L.T == A
    A = Matrix(((25, 15, -5), (15, 18, 0), (-5, 0, 11)))
    L = A.cholesky()
    assert L * L.T == A
    assert L.is_lower
    assert L == Matrix([[5, 0, 0], [3, 3, 0], [-1, 1, 3]])
    A = Matrix(((4, -2*I, 2 + 2*I), (2*I, 2, -1 + I), (2 - 2*I, -1 - I, 11)))
    assert A.cholesky().expand() == Matrix(((2, 0, 0), (I, 1, 0), (1 - I, 0, 3)))

    raises(NonSquareMatrixError, lambda: SparseMatrix((1, 2)).cholesky())
    raises(ValueError, lambda: SparseMatrix(((1, 2), (3, 4))).cholesky())
    raises(ValueError, lambda: SparseMatrix(((5 + I, 0), (0, 1))).cholesky())
    raises(ValueError, lambda: SparseMatrix(((1, 5), (5, 1))).cholesky())
    raises(ValueError, lambda: SparseMatrix(((1, 2), (3, 4))).cholesky(hermitian=False))
    assert SparseMatrix(((5 + I, 0), (0, 1))).cholesky(hermitian=False) == Matrix([
        [sqrt(5 + I), 0], [0, 1]])
    A = SparseMatrix(((1, 5), (5, 1)))
    L = A.cholesky(hermitian=False)
    assert L == Matrix([[1, 0], [5, 2*sqrt(6)*I]])
    assert L*L.T == A
    A = SparseMatrix(((25, 15, -5), (15, 18, 0), (-5, 0, 11)))
    L = A.cholesky()
    assert L * L.T == A
    assert L.is_lower
    assert L == Matrix([[5, 0, 0], [3, 3, 0], [-1, 1, 3]])
    A = SparseMatrix(((4, -2*I, 2 + 2*I), (2*I, 2, -1 + I), (2 - 2*I, -1 - I, 11)))
    assert A.cholesky() == Matrix(((2, 0, 0), (I, 1, 0), (1 - I, 0, 3)))


def test_matrix_norm():
    # Vector Tests
    # Test columns and symbols
    x = Symbol('x', real=True)
    v = Matrix([cos(x), sin(x)])
    assert trigsimp(v.norm(2)) == 1
    assert v.norm(10) == Pow(cos(x)**10 + sin(x)**10, Rational(1, 10))

    # Test Rows
    A = Matrix([[5, Rational(3, 2)]])
    assert A.norm() == Pow(25 + Rational(9, 4), S.Half)
    assert A.norm(oo) == max(A)
    assert A.norm(-oo) == min(A)

    # Matrix Tests
    # Intuitive test
    A = Matrix([[1, 1], [1, 1]])
    assert A.norm(2) == 2
    assert A.norm(-2) == 0
    assert A.norm('frobenius') == 2
    assert eye(10).norm(2) == eye(10).norm(-2) == 1
    assert A.norm(oo) == 2

    # Test with Symbols and more complex entries
    A = Matrix([[3, y, y], [x, S.Half, -pi]])
    assert (A.norm('fro')
           == sqrt(Rational(37, 4) + 2*abs(y)**2 + pi**2 + x**2))

    # Check non-square
    A = Matrix([[1, 2, -3], [4, 5, Rational(13, 2)]])
    assert A.norm(2) == sqrt(Rational(389, 8) + sqrt(78665)/8)
    assert A.norm(-2) is S.Zero
    assert A.norm('frobenius') == sqrt(389)/2

    # Test properties of matrix norms
    # https://en.wikipedia.org/wiki/Matrix_norm#Definition
    # Two matrices
    A = Matrix([[1, 2], [3, 4]])
    B = Matrix([[5, 5], [-2, 2]])
    C = Matrix([[0, -I], [I, 0]])
    D = Matrix([[1, 0], [0, -1]])
    L = [A, B, C, D]
    alpha = Symbol('alpha', real=True)

    for order in ['fro', 2, -2]:
        # Zero Check
        assert zeros(3).norm(order) is S.Zero
        # Check Triangle Inequality for all Pairs of Matrices
        for X in L:
            for Y in L:
                dif = (X.norm(order) + Y.norm(order) -
                    (X + Y).norm(order))
                assert (dif >= 0)
        # Scalar multiplication linearity
        for M in [A, B, C, D]:
            dif = simplify((alpha*M).norm(order) -
                    abs(alpha) * M.norm(order))
            assert dif == 0

    # Test Properties of Vector Norms
    # https://en.wikipedia.org/wiki/Vector_norm
    # Two column vectors
    a = Matrix([1, 1 - 1*I, -3])
    b = Matrix([S.Half, 1*I, 1])
    c = Matrix([-1, -1, -1])
    d = Matrix([3, 2, I])
    e = Matrix([Integer(1e2), Rational(1, 1e2), 1])
    L = [a, b, c, d, e]
    alpha = Symbol('alpha', real=True)

    for order in [1, 2, -1, -2, S.Infinity, S.NegativeInfinity, pi]:
        # Zero Check
        if order > 0:
            assert Matrix([0, 0, 0]).norm(order) is S.Zero
        # Triangle inequality on all pairs
        if order >= 1:  # Triangle InEq holds only for these norms
            for X in L:
                for Y in L:
                    dif = (X.norm(order) + Y.norm(order) -
                        (X + Y).norm(order))
                    assert simplify(dif >= 0) is S.true
        # Linear to scalar multiplication
        if order in [1, 2, -1, -2, S.Infinity, S.NegativeInfinity]:
            for X in L:
                dif = simplify((alpha*X).norm(order) -
                    (abs(alpha) * X.norm(order)))
                assert dif == 0

    # ord=1
    M = Matrix(3, 3, [1, 3, 0, -2, -1, 0, 3, 9, 6])
    assert M.norm(1) == 13


def test_condition_number():
    x = Symbol('x', real=True)
    A = eye(3)
    A[0, 0] = 10
    A[2, 2] = Rational(1, 10)
    assert A.condition_number() == 100

    A[1, 1] = x
    assert A.condition_number() == Max(10, Abs(x)) / Min(Rational(1, 10), Abs(x))

    M = Matrix([[cos(x), sin(x)], [-sin(x), cos(x)]])
    Mc = M.condition_number()
    assert all(Float(1.).epsilon_eq(Mc.subs(x, val).evalf()) for val in
        [Rational(1, 5), S.Half, Rational(1, 10), pi/2, pi, pi*Rational(7, 4) ])

    #issue 10782
    assert Matrix([]).condition_number() == 0


def test_equality():
    A = Matrix(((1, 2, 3), (4, 5, 6), (7, 8, 9)))
    B = Matrix(((9, 8, 7), (6, 5, 4), (3, 2, 1)))
    assert A == A[:, :]
    assert not A != A[:, :]
    assert not A == B
    assert A != B
    assert A != 10
    assert not A == 10

    # A SparseMatrix can be equal to a Matrix
    C = SparseMatrix(((1, 0, 0), (0, 1, 0), (0, 0, 1)))
    D = Matrix(((1, 0, 0), (0, 1, 0), (0, 0, 1)))
    assert C == D
    assert not C != D


def test_col_join():
    assert eye(3).col_join(Matrix([[7, 7, 7]])) == \
        Matrix([[1, 0, 0],
                [0, 1, 0],
                [0, 0, 1],
                [7, 7, 7]])


def test_row_insert():
    r4 = Matrix([[4, 4, 4]])
    for i in range(-4, 5):
        l = [1, 0, 0]
        l.insert(i, 4)
        assert flatten(eye(3).row_insert(i, r4).col(0).tolist()) == l


def test_col_insert():
    c4 = Matrix([4, 4, 4])
    for i in range(-4, 5):
        l = [0, 0, 0]
        l.insert(i, 4)
        assert flatten(zeros(3).col_insert(i, c4).row(0).tolist()) == l


def test_normalized():
    assert Matrix([3, 4]).normalized() == \
        Matrix([Rational(3, 5), Rational(4, 5)])

    # Zero vector trivial cases
    assert Matrix([0, 0, 0]).normalized() == Matrix([0, 0, 0])

    # Machine precision error truncation trivial cases
    m = Matrix([0,0,1.e-100])
    assert m.normalized(
    iszerofunc=lambda x: x.evalf(n=10, chop=True).is_zero
    ) == Matrix([0, 0, 0])


def test_print_nonzero():
    assert capture(lambda: eye(3).print_nonzero()) == \
        '[X  ]\n[ X ]\n[  X]\n'
    assert capture(lambda: eye(3).print_nonzero('.')) == \
        '[.  ]\n[ . ]\n[  .]\n'


def test_zeros_eye():
    assert Matrix.eye(3) == eye(3)
    assert Matrix.zeros(3) == zeros(3)
    assert ones(3, 4) == Matrix(3, 4, [1]*12)

    i = Matrix([[1, 0], [0, 1]])
    z = Matrix([[0, 0], [0, 0]])
    for cls in classes:
        m = cls.eye(2)
        assert i == m  # but m == i will fail if m is immutable
        assert i == eye(2, cls=cls)
        assert type(m) == cls
        m = cls.zeros(2)
        assert z == m
        assert z == zeros(2, cls=cls)
        assert type(m) == cls


def test_is_zero():
    assert Matrix().is_zero_matrix
    assert Matrix([[0, 0], [0, 0]]).is_zero_matrix
    assert zeros(3, 4).is_zero_matrix
    assert not eye(3).is_zero_matrix
    assert Matrix([[x, 0], [0, 0]]).is_zero_matrix == None
    assert SparseMatrix([[x, 0], [0, 0]]).is_zero_matrix == None
    assert ImmutableMatrix([[x, 0], [0, 0]]).is_zero_matrix == None
    assert ImmutableSparseMatrix([[x, 0], [0, 0]]).is_zero_matrix == None
    assert Matrix([[x, 1], [0, 0]]).is_zero_matrix == False
    a = Symbol('a', nonzero=True)
    assert Matrix([[a, 0], [0, 0]]).is_zero_matrix == False


def test_rotation_matrices():
    # This tests the rotation matrices by rotating about an axis and back.
    theta = pi/3
    r3_plus = rot_axis3(theta)
    r3_minus = rot_axis3(-theta)
    r2_plus = rot_axis2(theta)
    r2_minus = rot_axis2(-theta)
    r1_plus = rot_axis1(theta)
    r1_minus = rot_axis1(-theta)
    assert r3_minus*r3_plus*eye(3) == eye(3)
    assert r2_minus*r2_plus*eye(3) == eye(3)
    assert r1_minus*r1_plus*eye(3) == eye(3)

    # Check the correctness of the trace of the rotation matrix
    assert r1_plus.trace() == 1 + 2*cos(theta)
    assert r2_plus.trace() == 1 + 2*cos(theta)
    assert r3_plus.trace() == 1 + 2*cos(theta)

    # Check that a rotation with zero angle doesn't change anything.
    assert rot_axis1(0) == eye(3)
    assert rot_axis2(0) == eye(3)
    assert rot_axis3(0) == eye(3)

    # Check left-hand convention
    # see Issue #24529
    q1 = Quaternion.from_axis_angle([1, 0, 0], pi / 2)
    q2 = Quaternion.from_axis_angle([0, 1, 0], pi / 2)
    q3 = Quaternion.from_axis_angle([0, 0, 1], pi / 2)
    assert rot_axis1(- pi / 2) == q1.to_rotation_matrix()
    assert rot_axis2(- pi / 2) == q2.to_rotation_matrix()
    assert rot_axis3(- pi / 2) == q3.to_rotation_matrix()
    # Check right-hand convention
    assert rot_ccw_axis1(+ pi / 2) == q1.to_rotation_matrix()
    assert rot_ccw_axis2(+ pi / 2) == q2.to_rotation_matrix()
    assert rot_ccw_axis3(+ pi / 2) == q3.to_rotation_matrix()


def test_DeferredVector():
    assert str(DeferredVector("vector")[4]) == "vector[4]"
    assert sympify(DeferredVector("d")) == DeferredVector("d")
    raises(IndexError, lambda: DeferredVector("d")[-1])
    assert str(DeferredVector("d")) == "d"
    assert repr(DeferredVector("test")) == "DeferredVector('test')"

def test_DeferredVector_not_iterable():
    assert not iterable(DeferredVector('X'))

def test_DeferredVector_Matrix():
    raises(TypeError, lambda: Matrix(DeferredVector("V")))

def test_GramSchmidt():
    R = Rational
    m1 = Matrix(1, 2, [1, 2])
    m2 = Matrix(1, 2, [2, 3])
    assert GramSchmidt([m1, m2]) == \
        [Matrix(1, 2, [1, 2]), Matrix(1, 2, [R(2)/5, R(-1)/5])]
    assert GramSchmidt([m1.T, m2.T]) == \
        [Matrix(2, 1, [1, 2]), Matrix(2, 1, [R(2)/5, R(-1)/5])]
    # from wikipedia
    assert GramSchmidt([Matrix([3, 1]), Matrix([2, 2])], True) == [
        Matrix([3*sqrt(10)/10, sqrt(10)/10]),
        Matrix([-sqrt(10)/10, 3*sqrt(10)/10])]
    # https://github.com/sympy/sympy/issues/9488
    L = FiniteSet(Matrix([1]))
    assert GramSchmidt(L) == [Matrix([[1]])]


def test_casoratian():
    assert casoratian([1, 2, 3, 4], 1) == 0
    assert casoratian([1, 2, 3, 4], 1, zero=False) == 0


def test_zero_dimension_multiply():
    assert (Matrix()*zeros(0, 3)).shape == (0, 3)
    assert zeros(3, 0)*zeros(0, 3) == zeros(3, 3)
    assert zeros(0, 3)*zeros(3, 0) == Matrix()


def test_slice_issue_2884():
    m = Matrix(2, 2, range(4))
    assert m[1, :] == Matrix([[2, 3]])
    assert m[-1, :] == Matrix([[2, 3]])
    assert m[:, 1] == Matrix([[1, 3]]).T
    assert m[:, -1] == Matrix([[1, 3]]).T
    raises(IndexError, lambda: m[2, :])
    raises(IndexError, lambda: m[2, 2])


def test_slice_issue_3401():
    assert zeros(0, 3)[:, -1].shape == (0, 1)
    assert zeros(3, 0)[0, :] == Matrix(1, 0, [])


def test_copyin():
    s = zeros(3, 3)
    s[3] = 1
    assert s[:, 0] == Matrix([0, 1, 0])
    assert s[3] == 1
    assert s[3: 4] == [1]
    s[1, 1] = 42
    assert s[1, 1] == 42
    assert s[1, 1:] == Matrix([[42, 0]])
    s[1, 1:] = Matrix([[5, 6]])
    assert s[1, :] == Matrix([[1, 5, 6]])
    s[1, 1:] = [[42, 43]]
    assert s[1, :] == Matrix([[1, 42, 43]])
    s[0, 0] = 17
    assert s[:, :1] == Matrix([17, 1, 0])
    s[0, 0] = [1, 1, 1]
    assert s[:, 0] == Matrix([1, 1, 1])
    s[0, 0] = Matrix([1, 1, 1])
    assert s[:, 0] == Matrix([1, 1, 1])
    s[0, 0] = SparseMatrix([1, 1, 1])
    assert s[:, 0] == Matrix([1, 1, 1])


def test_invertible_check():
    # sometimes a singular matrix will have a pivot vector shorter than
    # the number of rows in a matrix...
    assert Matrix([[1, 2], [1, 2]]).rref() == (Matrix([[1, 2], [0, 0]]), (0,))
    raises(ValueError, lambda: Matrix([[1, 2], [1, 2]]).inv())
    m = Matrix([
        [-1, -1,  0],
        [ x,  1,  1],
        [ 1,  x, -1],
    ])
    assert len(m.rref()[1]) != m.rows
    # in addition, unless simplify=True in the call to rref, the identity
    # matrix will be returned even though m is not invertible
    assert m.rref()[0] != eye(3)
    assert m.rref(simplify=signsimp)[0] != eye(3)
    raises(ValueError, lambda: m.inv(method="ADJ"))
    raises(ValueError, lambda: m.inv(method="GE"))
    raises(ValueError, lambda: m.inv(method="LU"))


def test_issue_3959():
    x, y = symbols('x, y')
    e = x*y
    assert e.subs(x, Matrix([3, 5, 3])) == Matrix([3, 5, 3])*y


def test_issue_5964():
    assert str(Matrix([[1, 2], [3, 4]])) == 'Matrix([[1, 2], [3, 4]])'


def test_issue_7604():
    x, y = symbols("x y")
    assert sstr(Matrix([[x, 2*y], [y**2, x + 3]])) == \
        'Matrix([\n[   x,   2*y],\n[y**2, x + 3]])'


def test_is_Identity():
    assert eye(3).is_Identity
    assert eye(3).as_immutable().is_Identity
    assert not zeros(3).is_Identity
    assert not ones(3).is_Identity
    # issue 6242
    assert not Matrix([[1, 0, 0]]).is_Identity
    # issue 8854
    assert SparseMatrix(3,3, {(0,0):1, (1,1):1, (2,2):1}).is_Identity
    assert not SparseMatrix(2,3, range(6)).is_Identity
    assert not SparseMatrix(3,3, {(0,0):1, (1,1):1}).is_Identity
    assert not SparseMatrix(3,3, {(0,0):1, (1,1):1, (2,2):1, (0,1):2, (0,2):3}).is_Identity


def test_dot():
    assert ones(1, 3).dot(ones(3, 1)) == 3
    assert ones(1, 3).dot([1, 1, 1]) == 3
    assert Matrix([1, 2, 3]).dot(Matrix([1, 2, 3])) == 14
    assert Matrix([1, 2, 3*I]).dot(Matrix([I, 2, 3*I])) == -5 + I
    assert Matrix([1, 2, 3*I]).dot(Matrix([I, 2, 3*I]), hermitian=False) == -5 + I
    assert Matrix([1, 2, 3*I]).dot(Matrix([I, 2, 3*I]), hermitian=True) == 13 + I
    assert Matrix([1, 2, 3*I]).dot(Matrix([I, 2, 3*I]), hermitian=True, conjugate_convention="physics") == 13 - I
    assert Matrix([1, 2, 3*I]).dot(Matrix([4, 5*I, 6]), hermitian=True, conjugate_convention="right") == 4 + 8*I
    assert Matrix([1, 2, 3*I]).dot(Matrix([4, 5*I, 6]), hermitian=True, conjugate_convention="left") == 4 - 8*I
    assert Matrix([I, 2*I]).dot(Matrix([I, 2*I]), hermitian=False, conjugate_convention="left") == -5
    assert Matrix([I, 2*I]).dot(Matrix([I, 2*I]), conjugate_convention="left") == 5
    raises(ValueError, lambda: Matrix([1, 2]).dot(Matrix([3, 4]), hermitian=True, conjugate_convention="test"))


def test_dual():
    B_x, B_y, B_z, E_x, E_y, E_z = symbols(
        'B_x B_y B_z E_x E_y E_z', real=True)
    F = Matrix((
        (   0,  E_x,  E_y,  E_z),
        (-E_x,    0,  B_z, -B_y),
        (-E_y, -B_z,    0,  B_x),
        (-E_z,  B_y, -B_x,    0)
    ))
    Fd = Matrix((
        (  0, -B_x, -B_y, -B_z),
        (B_x,    0,  E_z, -E_y),
        (B_y, -E_z,    0,  E_x),
        (B_z,  E_y, -E_x,    0)
    ))
    assert F.dual().equals(Fd)
    assert eye(3).dual().equals(zeros(3))
    assert F.dual().dual().equals(-F)


def test_anti_symmetric():
    assert Matrix([1, 2]).is_anti_symmetric() is False
    m = Matrix(3, 3, [0, x**2 + 2*x + 1, y, -(x + 1)**2, 0, x*y, -y, -x*y, 0])
    assert m.is_anti_symmetric() is True
    assert m.is_anti_symmetric(simplify=False) is None
    assert m.is_anti_symmetric(simplify=lambda x: x) is None

    # tweak to fail
    m[2, 1] = -m[2, 1]
    assert m.is_anti_symmetric() is None
    # untweak
    m[2, 1] = -m[2, 1]

    m = m.expand()
    assert m.is_anti_symmetric(simplify=False) is True
    m[0, 0] = 1
    assert m.is_anti_symmetric() is False


def test_normalize_sort_diogonalization():
    A = Matrix(((1, 2), (2, 1)))
    P, Q = A.diagonalize(normalize=True)
    assert P*P.T == P.T*P == eye(P.cols)
    P, Q = A.diagonalize(normalize=True, sort=True)
    assert P*P.T == P.T*P == eye(P.cols)
    assert P*Q*P.inv() == A


def test_issue_5321():
    raises(ValueError, lambda: Matrix([[1, 2, 3], Matrix(0, 1, [])]))


def test_issue_5320():
    assert Matrix.hstack(eye(2), 2*eye(2)) == Matrix([
        [1, 0, 2, 0],
        [0, 1, 0, 2]
    ])
    assert Matrix.vstack(eye(2), 2*eye(2)) == Matrix([
        [1, 0],
        [0, 1],
        [2, 0],
        [0, 2]
    ])
    cls = SparseMatrix
    assert cls.hstack(cls(eye(2)), cls(2*eye(2))) == Matrix([
        [1, 0, 2, 0],
        [0, 1, 0, 2]
    ])

def test_issue_11944():
    A = Matrix([[1]])
    AIm = sympify(A)
    assert Matrix.hstack(AIm, A) == Matrix([[1, 1]])
    assert Matrix.vstack(AIm, A) == Matrix([[1], [1]])

def test_cross():
    a = [1, 2, 3]
    b = [3, 4, 5]
    col = Matrix([-2, 4, -2])
    row = col.T

    def test(M, ans):
        assert ans == M
        assert type(M) == cls
    for cls in classes:
        A = cls(a)
        B = cls(b)
        test(A.cross(B), col)
        test(A.cross(B.T), col)
        test(A.T.cross(B.T), row)
        test(A.T.cross(B), row)
    raises(ShapeError, lambda:
        Matrix(1, 2, [1, 1]).cross(Matrix(1, 2, [1, 1])))

def test_hat_vee():
    v1 = Matrix([x, y, z])
    v2 = Matrix([a, b, c])
    assert v1.hat() * v2 == v1.cross(v2)
    assert v1.hat().is_anti_symmetric()
    assert v1.hat().vee() == v1

def test_hash():
    for cls in classes[-2:]:
        s = {cls.eye(1), cls.eye(1)}
        assert len(s) == 1 and s.pop() == cls.eye(1)
    # issue 3979
    for cls in classes[:2]:
        assert not isinstance(cls.eye(1), Hashable)


@XFAIL
def test_issue_3979():
    # when this passes, delete this and change the [1:2]
    # to [:2] in the test_hash above for issue 3979
    cls = classes[0]
    raises(AttributeError, lambda: hash(cls.eye(1)))


def test_adjoint():
    dat = [[0, I], [1, 0]]
    ans = Matrix([[0, 1], [-I, 0]])
    for cls in classes:
        assert ans == cls(dat).adjoint()


def test_adjoint_with_operator():
    # Regression test for issue 25130: adjoint() should propagate to operators
    import sympy.physics.quantum
    a = sympy.physics.quantum.operator.Operator('a')
    a_dag = sympy.physics.quantum.Dagger(a)
    dat = [[0, I * a], [0, a_dag]]
    ans = Matrix([[0, 0], [-I * a_dag, a]])
    for cls in classes:
        assert ans == cls(dat).adjoint()


def test_simplify_immutable():
    assert simplify(ImmutableMatrix([[sin(x)**2 + cos(x)**2]])) == \
                    ImmutableMatrix([[1]])

def test_replace():
    F, G = symbols('F, G', cls=Function)
    K = Matrix(2, 2, lambda i, j: G(i+j))
    M = Matrix(2, 2, lambda i, j: F(i+j))
    N = M.replace(F, G)
    assert N == K


def test_atoms():
    m = Matrix([[1, 2], [x, 1 - 1/x]])
    assert m.atoms() == {S.One,S(2),S.NegativeOne, x}
    assert m.atoms(Symbol) == {x}


def test_pinv():
    # Pseudoinverse of an invertible matrix is the inverse.
    A1 = Matrix([[a, b], [c, d]])
    assert simplify(A1.pinv(method="RD")) == simplify(A1.inv())

    # Test the four properties of the pseudoinverse for various matrices.
    As = [Matrix([[13, 104], [2212, 3], [-3, 5]]),
          Matrix([[1, 7, 9], [11, 17, 19]]),
          Matrix([a, b])]

    for A in As:
        A_pinv = A.pinv(method="RD")
        AAp = A * A_pinv
        ApA = A_pinv * A
        assert simplify(AAp * A) == A
        assert simplify(ApA * A_pinv) == A_pinv
        assert AAp.H == AAp
        assert ApA.H == ApA

    # XXX Pinv with diagonalization makes expression too complicated.
    for A in As:
        A_pinv = simplify(A.pinv(method="ED"))
        AAp = A * A_pinv
        ApA = A_pinv * A
        assert simplify(AAp * A) == A
        assert simplify(ApA * A_pinv) == A_pinv
        assert AAp.H == AAp
        assert ApA.H == ApA

    # XXX Computing pinv using diagonalization makes an expression that
    # is too complicated to simplify.
    # A1 = Matrix([[a, b], [c, d]])
    # assert simplify(A1.pinv(method="ED")) == simplify(A1.inv())
    # so this is tested numerically at a fixed random point

    from sympy.core.numbers import comp
    q = A1.pinv(method="ED")
    w = A1.inv()
    reps = {a: -73633, b: 11362, c: 55486, d: 62570}
    assert all(
        comp(i.n(), j.n())
        for i, j in zip(q.subs(reps), w.subs(reps))
        )


@slow
def test_pinv_rank_deficient_when_diagonalization_fails():
    # Test the four properties of the pseudoinverse for matrices when
    # diagonalization of A.H*A fails.
    As = [
        Matrix([
            [61, 89, 55, 20, 71, 0],
            [62, 96, 85, 85, 16, 0],
            [69, 56, 17,  4, 54, 0],
            [10, 54, 91, 41, 71, 0],
            [ 7, 30, 10, 48, 90, 0],
            [0, 0, 0, 0, 0, 0]])
    ]
    for A in As:
        A_pinv = A.pinv(method="ED")
        AAp = A * A_pinv
        ApA = A_pinv * A
        assert AAp.H == AAp

        # Here ApA.H and ApA are equivalent expressions but they are very
        # complicated expressions involving RootOfs. Using simplify would be
        # too slow and so would evalf so we substitute approximate values for
        # the RootOfs and then evalf which is less accurate but good enough to
        # confirm that these two matrices are equivalent.
        #
        # assert ApA.H == ApA  # <--- would fail (structural equality)
        # assert simplify(ApA.H - ApA).is_zero_matrix  # <--- too slow
        # (ApA.H - ApA).evalf()  # <--- too slow

        def allclose(M1, M2):
            rootofs = M1.atoms(RootOf)
            rootofs_approx = {r: r.evalf() for r in rootofs}
            diff_approx = (M1 - M2).xreplace(rootofs_approx).evalf()
            return all(abs(e) < 1e-10 for e in diff_approx)

        assert allclose(ApA.H, ApA)


def test_issue_7201():
    assert ones(0, 1) + ones(0, 1) == Matrix(0, 1, [])
    assert ones(1, 0) + ones(1, 0) == Matrix(1, 0, [])

def test_free_symbols():
    for M in ImmutableMatrix, ImmutableSparseMatrix, Matrix, SparseMatrix:
        assert M([[x], [0]]).free_symbols == {x}

def test_from_ndarray():
    """See issue 7465."""
    try:
        from numpy import array
    except ImportError:
        skip('NumPy must be available to test creating matrices from ndarrays')

    assert Matrix(array([1, 2, 3])) == Matrix([1, 2, 3])
    assert Matrix(array([[1, 2, 3]])) == Matrix([[1, 2, 3]])
    assert Matrix(array([[1, 2, 3], [4, 5, 6]])) == \
        Matrix([[1, 2, 3], [4, 5, 6]])
    assert Matrix(array([x, y, z])) == Matrix([x, y, z])
    raises(NotImplementedError,
        lambda: Matrix(array([[[1, 2], [3, 4]], [[5, 6], [7, 8]]])))
    assert Matrix([array([1, 2]), array([3, 4])]) == Matrix([[1, 2], [3, 4]])
    assert Matrix([array([1, 2]), [3, 4]]) == Matrix([[1, 2], [3, 4]])
    assert Matrix([array([]), array([])]) == Matrix(2, 0, []) != Matrix(0, 0, [])

def test_17522_numpy():
    from sympy.matrices.common import _matrixify
    try:
        from numpy import array, matrix
    except ImportError:
        skip('NumPy must be available to test indexing matrixified NumPy ndarrays and matrices')

    m = _matrixify(array([[1, 2], [3, 4]]))
    assert m[3] == 4
    assert list(m) == [1, 2, 3, 4]

    with ignore_warnings(PendingDeprecationWarning):
        m = _matrixify(matrix([[1, 2], [3, 4]]))
    assert m[3] == 4
    assert list(m) == [1, 2, 3, 4]

def test_17522_mpmath():
    from sympy.matrices.common import _matrixify
    try:
        from mpmath import matrix
    except ImportError:
        skip('mpmath must be available to test indexing matrixified mpmath matrices')

    m = _matrixify(matrix([[1, 2], [3, 4]]))
    assert m[3] == 4.0
    assert list(m) == [1.0, 2.0, 3.0, 4.0]

def test_17522_scipy():
    from sympy.matrices.common import _matrixify
    try:
        from scipy.sparse import csr_matrix
    except ImportError:
        skip('SciPy must be available to test indexing matrixified SciPy sparse matrices')

    m = _matrixify(csr_matrix([[1, 2], [3, 4]]))
    assert m[3] == 4
    assert list(m) == [1, 2, 3, 4]

def test_hermitian():
    a = Matrix([[1, I], [-I, 1]])
    assert a.is_hermitian
    a[0, 0] = 2*I
    assert a.is_hermitian is False
    a[0, 0] = x
    assert a.is_hermitian is None
    a[0, 1] = a[1, 0]*I
    assert a.is_hermitian is False
    b = HermitianOperator("b")
    c = Operator("c")
    assert Matrix([[b]]).is_hermitian is True
    assert Matrix([[b, c], [Dagger(c), b]]).is_hermitian is True
    assert Matrix([[b, c], [c, b]]).is_hermitian is False
    assert Matrix([[b, c], [transpose(c), b]]).is_hermitian is False

def test_doit():
    a = Matrix([[Add(x,x, evaluate=False)]])
    assert a[0] != 2*x
    assert a.doit() == Matrix([[2*x]])

def test_issue_9457_9467_9876():
    # for row_del(index)
    M = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    M.row_del(1)
    assert M == Matrix([[1, 2, 3], [3, 4, 5]])
    N = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    N.row_del(-2)
    assert N == Matrix([[1, 2, 3], [3, 4, 5]])
    O = Matrix([[1, 2, 3], [5, 6, 7], [9, 10, 11]])
    O.row_del(-1)
    assert O == Matrix([[1, 2, 3], [5, 6, 7]])
    P = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    raises(IndexError, lambda: P.row_del(10))
    Q = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    raises(IndexError, lambda: Q.row_del(-10))

    # for col_del(index)
    M = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    M.col_del(1)
    assert M == Matrix([[1, 3], [2, 4], [3, 5]])
    N = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    N.col_del(-2)
    assert N == Matrix([[1, 3], [2, 4], [3, 5]])
    P = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    raises(IndexError, lambda: P.col_del(10))
    Q = Matrix([[1, 2, 3], [2, 3, 4], [3, 4, 5]])
    raises(IndexError, lambda: Q.col_del(-10))

def test_issue_9422():
    x, y = symbols('x y', commutative=False)
    a, b = symbols('a b')
    M = eye(2)
    M1 = Matrix(2, 2, [x, y, y, z])
    assert y*x*M != x*y*M
    assert b*a*M == a*b*M
    assert x*M1 != M1*x
    assert a*M1 == M1*a
    assert y*x*M == Matrix([[y*x, 0], [0, y*x]])


def test_issue_10770():
    M = Matrix([])
    a = ['col_insert', 'row_join'], Matrix([9, 6, 3])
    b = ['row_insert', 'col_join'], a[1].T
    c = ['row_insert', 'col_insert'], Matrix([[1, 2], [3, 4]])
    for ops, m in (a, b, c):
        for op in ops:
            f = getattr(M, op)
            new = f(m) if 'join' in op else f(42, m)
            assert new == m and id(new) != id(m)


def test_issue_10658():
    A = Matrix([[1, 2, 3], [4, 5, 6], [7, 8, 9]])
    assert A.extract([0, 1, 2], [True, True, False]) == \
        Matrix([[1, 2], [4, 5], [7, 8]])
    assert A.extract([0, 1, 2], [True, False, False]) == Matrix([[1], [4], [7]])
    assert A.extract([True, False, False], [0, 1, 2]) == Matrix([[1, 2, 3]])
    assert A.extract([True, False, True], [0, 1, 2]) == \
        Matrix([[1, 2, 3], [7, 8, 9]])
    assert A.extract([0, 1, 2], [False, False, False]) == Matrix(3, 0, [])
    assert A.extract([False, False, False], [0, 1, 2]) == Matrix(0, 3, [])
    assert A.extract([True, False, True], [False, True, False]) == \
        Matrix([[2], [8]])

def test_opportunistic_simplification():
    # this test relates to issue #10718, #9480, #11434

    # issue #9480
    m = Matrix([[-5 + 5*sqrt(2), -5], [-5*sqrt(2)/2 + 5, -5*sqrt(2)/2]])
    assert m.rank() == 1

    # issue #10781
    m = Matrix([[3+3*sqrt(3)*I, -9],[4,-3+3*sqrt(3)*I]])
    assert simplify(m.rref()[0] - Matrix([[1, -9/(3 + 3*sqrt(3)*I)], [0, 0]])) == zeros(2, 2)

    # issue #11434
    ax,ay,bx,by,cx,cy,dx,dy,ex,ey,t0,t1 = symbols('a_x a_y b_x b_y c_x c_y d_x d_y e_x e_y t_0 t_1')
    m = Matrix([[ax,ay,ax*t0,ay*t0,0],[bx,by,bx*t0,by*t0,0],[cx,cy,cx*t0,cy*t0,1],[dx,dy,dx*t0,dy*t0,1],[ex,ey,2*ex*t1-ex*t0,2*ey*t1-ey*t0,0]])
    assert m.rank() == 4

def test_partial_pivoting():
    # example from https://en.wikipedia.org/wiki/Pivot_element
    # partial pivoting with back substitution gives a perfect result
    # naive pivoting give an error ~1e-13, so anything better than
    # 1e-15 is good
    mm=Matrix([[0.003, 59.14, 59.17], [5.291, -6.13, 46.78]])
    assert (mm.rref()[0] - Matrix([[1.0,   0, 10.0],
                                   [  0, 1.0,  1.0]])).norm() < 1e-15

    # issue #11549
    m_mixed = Matrix([[6e-17, 1.0, 4],
                      [ -1.0,   0, 8],
                      [    0,   0, 1]])
    m_float = Matrix([[6e-17,  1.0, 4.],
                      [ -1.0,   0., 8.],
                      [   0.,   0., 1.]])
    m_inv = Matrix([[  0,    -1.0,  8.0],
                    [1.0, 6.0e-17, -4.0],
                    [  0,       0,    1]])
    # this example is numerically unstable and involves a matrix with a norm >= 8,
    # this comparing the difference of the results with 1e-15 is numerically sound.
    assert (m_mixed.inv() - m_inv).norm() < 1e-15
    assert (m_float.inv() - m_inv).norm() < 1e-15

def test_iszero_substitution():
    """ When doing numerical computations, all elements that pass
    the iszerofunc test should be set to numerically zero if they
    aren't already. """

    # Matrix from issue #9060
    m = Matrix([[0.9, -0.1, -0.2, 0],[-0.8, 0.9, -0.4, 0],[-0.1, -0.8, 0.6, 0]])
    m_rref = m.rref(iszerofunc=lambda x: abs(x)<6e-15)[0]
    m_correct = Matrix([[1.0,   0, -0.301369863013699, 0],[  0, 1.0, -0.712328767123288, 0],[  0,   0,                  0, 0]])
    m_diff = m_rref - m_correct
    assert m_diff.norm() < 1e-15
    # if a zero-substitution wasn't made, this entry will be -1.11022302462516e-16
    assert m_rref[2,2] == 0

def test_issue_11238():
    from sympy.geometry.point import Point
    xx = 8*tan(pi*Rational(13, 45))/(tan(pi*Rational(13, 45)) + sqrt(3))
    yy = (-8*sqrt(3)*tan(pi*Rational(13, 45))**2 + 24*tan(pi*Rational(13, 45)))/(-3 + tan(pi*Rational(13, 45))**2)
    p1 = Point(0, 0)
    p2 = Point(1, -sqrt(3))
    p0 = Point(xx,yy)
    m1 = Matrix([p1 - simplify(p0), p2 - simplify(p0)])
    m2 = Matrix([p1 - p0, p2 - p0])
    m3 = Matrix([simplify(p1 - p0), simplify(p2 - p0)])

    # This system has expressions which are zero and
    # cannot be easily proved to be such, so without
    # numerical testing, these assertions will fail.
    Z = lambda x: abs(x.n()) < 1e-20
    assert m1.rank(simplify=True, iszerofunc=Z) == 1
    assert m2.rank(simplify=True, iszerofunc=Z) == 1
    assert m3.rank(simplify=True, iszerofunc=Z) == 1

def test_as_real_imag():
    m1 = Matrix(2,2,[1,2,3,4])
    m2 = m1*S.ImaginaryUnit
    m3 = m1 + m2

    for kls in classes:
        a,b = kls(m3).as_real_imag()
        assert list(a) == list(m1)
        assert list(b) == list(m1)

def test_deprecated():
    # Maintain tests for deprecated functions.  We must capture
    # the deprecation warnings.  When the deprecated functionality is
    # removed, the corresponding tests should be removed.

    m = Matrix(3, 3, [0, 1, 0, -4, 4, 0, -2, 1, 2])
    P, Jcells = m.jordan_cells()
    assert Jcells[1] == Matrix(1, 1, [2])
    assert Jcells[0] == Matrix(2, 2, [2, 1, 0, 2])


def test_issue_14489():
    from sympy.core.mod import Mod
    A = Matrix([-1, 1, 2])
    B = Matrix([10, 20, -15])

    assert Mod(A, 3) == Matrix([2, 1, 2])
    assert Mod(B, 4) == Matrix([2, 0, 1])

def test_issue_14943():
    # Test that __array__ accepts the optional dtype argument
    try:
        from numpy import array
    except ImportError:
        skip('NumPy must be available to test creating matrices from ndarrays')

    M = Matrix([[1,2], [3,4]])
    assert array(M, dtype=float).dtype.name == 'float64'

def test_case_6913():
    m = MatrixSymbol('m', 1, 1)
    a = Symbol("a")
    a = m[0, 0]>0
    assert str(a) == 'm[0, 0] > 0'

def test_issue_11948():
    A = MatrixSymbol('A', 3, 3)
    a = Wild('a')
    assert A.match(a) == {a: A}

def test_gramschmidt_conjugate_dot():
    vecs = [Matrix([1, I]), Matrix([1, -I])]
    assert Matrix.orthogonalize(*vecs) == \
        [Matrix([[1], [I]]), Matrix([[1], [-I]])]

    vecs = [Matrix([1, I, 0]), Matrix([I, 0, -I])]
    assert Matrix.orthogonalize(*vecs) == \
        [Matrix([[1], [I], [0]]), Matrix([[I/2], [S(1)/2], [-I]])]

    mat = Matrix([[1, I], [1, -I]])
    Q, R = mat.QRdecomposition()
    assert Q * Q.H == Matrix.eye(2)

def test_issue_8207():
    a = Matrix(MatrixSymbol('a', 3, 1))
    b = Matrix(MatrixSymbol('b', 3, 1))
    c = a.dot(b)
    d = diff(c, a[0, 0])
    e = diff(d, a[0, 0])
    assert d == b[0, 0]
    assert e == 0

def test_func():
    from sympy.simplify.simplify import nthroot

    A = Matrix([[1, 2],[0, 3]])
    assert A.analytic_func(sin(x*t), x) == Matrix([[sin(t), sin(3*t) - sin(t)], [0, sin(3*t)]])

    A = Matrix([[2, 1],[1, 2]])
    assert (pi * A / 6).analytic_func(cos(x), x) == Matrix([[sqrt(3)/4, -sqrt(3)/4], [-sqrt(3)/4, sqrt(3)/4]])


    raises(ValueError, lambda : zeros(5).analytic_func(log(x), x))
    raises(ValueError, lambda : (A*x).analytic_func(log(x), x))

    A = Matrix([[0, -1, -2, 3], [0, -1, -2, 3], [0, 1, 0, -1], [0, 0, -1, 1]])
    assert A.analytic_func(exp(x), x) == A.exp()
    raises(ValueError, lambda : A.analytic_func(sqrt(x), x))

    A = Matrix([[41, 12],[12, 34]])
    assert simplify(A.analytic_func(sqrt(x), x)**2) == A

    A = Matrix([[3, -12, 4], [-1, 0, -2], [-1, 5, -1]])
    assert simplify(A.analytic_func(nthroot(x, 3), x)**3) == A

    A = Matrix([[2, 0, 0, 0], [1, 2, 0, 0], [0, 1, 3, 0], [0, 0, 1, 3]])
    assert A.analytic_func(exp(x), x) == A.exp()

    A = Matrix([[0, 2, 1, 6], [0, 0, 1, 2], [0, 0, 0, 3], [0, 0, 0, 0]])
    assert A.analytic_func(exp(x*t), x) == expand(simplify((A*t).exp()))


@skip_under_pyodide("Cannot create threads under pyodide.")
def test_issue_19809():

    def f():
        assert _dotprodsimp_state.state == None
        m = Matrix([[1]])
        m = m * m
        return True

    with dotprodsimp(True):
        with concurrent.futures.ThreadPoolExecutor() as executor:
            future = executor.submit(f)
            assert future.result()


def test_issue_23276():
    M = Matrix([x, y])
    assert integrate(M, (x, 0, 1), (y, 0, 1)) == Matrix([
        [S.Half],
        [S.Half]])


# SubspaceOnlyMatrix tests
def test_columnspace_one():
    m = SubspaceOnlyMatrix([[ 1,  2,  0,  2,  5],
                            [-2, -5,  1, -1, -8],
                            [ 0, -3,  3,  4,  1],
                            [ 3,  6,  0, -7,  2]])

    basis = m.columnspace()
    assert basis[0] == Matrix([1, -2, 0, 3])
    assert basis[1] == Matrix([2, -5, -3, 6])
    assert basis[2] == Matrix([2, -1, 4, -7])

    assert len(basis) == 3
    assert Matrix.hstack(m, *basis).columnspace() == basis


def test_rowspace():
    m = SubspaceOnlyMatrix([[ 1,  2,  0,  2,  5],
                            [-2, -5,  1, -1, -8],
                            [ 0, -3,  3,  4,  1],
                            [ 3,  6,  0, -7,  2]])

    basis = m.rowspace()
    assert basis[0] == Matrix([[1, 2, 0, 2, 5]])
    assert basis[1] == Matrix([[0, -1, 1, 3, 2]])
    assert basis[2] == Matrix([[0, 0, 0, 5, 5]])

    assert len(basis) == 3


def test_nullspace_one():
    m = SubspaceOnlyMatrix([[ 1,  2,  0,  2,  5],
                            [-2, -5,  1, -1, -8],
                            [ 0, -3,  3,  4,  1],
                            [ 3,  6,  0, -7,  2]])

    basis = m.nullspace()
    assert basis[0] == Matrix([-2, 1, 1, 0, 0])
    assert basis[1] == Matrix([-1, -1, 0, -1, 1])
    # make sure the null space is really gets zeroed
    assert all(e.is_zero for e in m*basis[0])
    assert all(e.is_zero for e in m*basis[1])


# ReductionsOnlyMatrix tests
def test_row_op():
    e = eye_Reductions(3)

    raises(ValueError, lambda: e.elementary_row_op("abc"))
    raises(ValueError, lambda: e.elementary_row_op())
    raises(ValueError, lambda: e.elementary_row_op('n->kn', row=5, k=5))
    raises(ValueError, lambda: e.elementary_row_op('n->kn', row=-5, k=5))
    raises(ValueError, lambda: e.elementary_row_op('n<->m', row1=1, row2=5))
    raises(ValueError, lambda: e.elementary_row_op('n<->m', row1=5, row2=1))
    raises(ValueError, lambda: e.elementary_row_op('n<->m', row1=-5, row2=1))
    raises(ValueError, lambda: e.elementary_row_op('n<->m', row1=1, row2=-5))
    raises(ValueError, lambda: e.elementary_row_op('n->n+km', row1=1, row2=5, k=5))
    raises(ValueError, lambda: e.elementary_row_op('n->n+km', row1=5, row2=1, k=5))
    raises(ValueError, lambda: e.elementary_row_op('n->n+km', row1=-5, row2=1, k=5))
    raises(ValueError, lambda: e.elementary_row_op('n->n+km', row1=1, row2=-5, k=5))
    raises(ValueError, lambda: e.elementary_row_op('n->n+km', row1=1, row2=1, k=5))

    # test various ways to set arguments
    assert e.elementary_row_op("n->kn", 0, 5) == Matrix([[5, 0, 0], [0, 1, 0], [0, 0, 1]])
    assert e.elementary_row_op("n->kn", 1, 5) == Matrix([[1, 0, 0], [0, 5, 0], [0, 0, 1]])
    assert e.elementary_row_op("n->kn", row=1, k=5) == Matrix([[1, 0, 0], [0, 5, 0], [0, 0, 1]])
    assert e.elementary_row_op("n->kn", row1=1, k=5) == Matrix([[1, 0, 0], [0, 5, 0], [0, 0, 1]])
    assert e.elementary_row_op("n<->m", 0, 1) == Matrix([[0, 1, 0], [1, 0, 0], [0, 0, 1]])
    assert e.elementary_row_op("n<->m", row1=0, row2=1) == Matrix([[0, 1, 0], [1, 0, 0], [0, 0, 1]])
    assert e.elementary_row_op("n<->m", row=0, row2=1) == Matrix([[0, 1, 0], [1, 0, 0], [0, 0, 1]])
    assert e.elementary_row_op("n->n+km", 0, 5, 1) == Matrix([[1, 5, 0], [0, 1, 0], [0, 0, 1]])
    assert e.elementary_row_op("n->n+km", row=0, k=5, row2=1) == Matrix([[1, 5, 0], [0, 1, 0], [0, 0, 1]])
    assert e.elementary_row_op("n->n+km", row1=0, k=5, row2=1) == Matrix([[1, 5, 0], [0, 1, 0], [0, 0, 1]])

    # make sure the matrix doesn't change size
    a = ReductionsOnlyMatrix(2, 3, [0]*6)
    assert a.elementary_row_op("n->kn", 1, 5) == Matrix(2, 3, [0]*6)
    assert a.elementary_row_op("n<->m", 0, 1) == Matrix(2, 3, [0]*6)
    assert a.elementary_row_op("n->n+km", 0, 5, 1) == Matrix(2, 3, [0]*6)


def test_col_op():
    e = eye_Reductions(3)

    raises(ValueError, lambda: e.elementary_col_op("abc"))
    raises(ValueError, lambda: e.elementary_col_op())
    raises(ValueError, lambda: e.elementary_col_op('n->kn', col=5, k=5))
    raises(ValueError, lambda: e.elementary_col_op('n->kn', col=-5, k=5))
    raises(ValueError, lambda: e.elementary_col_op('n<->m', col1=1, col2=5))
    raises(ValueError, lambda: e.elementary_col_op('n<->m', col1=5, col2=1))
    raises(ValueError, lambda: e.elementary_col_op('n<->m', col1=-5, col2=1))
    raises(ValueError, lambda: e.elementary_col_op('n<->m', col1=1, col2=-5))
    raises(ValueError, lambda: e.elementary_col_op('n->n+km', col1=1, col2=5, k=5))
    raises(ValueError, lambda: e.elementary_col_op('n->n+km', col1=5, col2=1, k=5))
    raises(ValueError, lambda: e.elementary_col_op('n->n+km', col1=-5, col2=1, k=5))
    raises(ValueError, lambda: e.elementary_col_op('n->n+km', col1=1, col2=-5, k=5))
    raises(ValueError, lambda: e.elementary_col_op('n->n+km', col1=1, col2=1, k=5))

    # test various ways to set arguments
    assert e.elementary_col_op("n->kn", 0, 5) == Matrix([[5, 0, 0], [0, 1, 0], [0, 0, 1]])
    assert e.elementary_col_op("n->kn", 1, 5) == Matrix([[1, 0, 0], [0, 5, 0], [0, 0, 1]])
    assert e.elementary_col_op("n->kn", col=1, k=5) == Matrix([[1, 0, 0], [0, 5, 0], [0, 0, 1]])
    assert e.elementary_col_op("n->kn", col1=1, k=5) == Matrix([[1, 0, 0], [0, 5, 0], [0, 0, 1]])
    assert e.elementary_col_op("n<->m", 0, 1) == Matrix([[0, 1, 0], [1, 0, 0], [0, 0, 1]])
    assert e.elementary_col_op("n<->m", col1=0, col2=1) == Matrix([[0, 1, 0], [1, 0, 0], [0, 0, 1]])
    assert e.elementary_col_op("n<->m", col=0, col2=1) == Matrix([[0, 1, 0], [1, 0, 0], [0, 0, 1]])
    assert e.elementary_col_op("n->n+km", 0, 5, 1) == Matrix([[1, 0, 0], [5, 1, 0], [0, 0, 1]])
    assert e.elementary_col_op("n->n+km", col=0, k=5, col2=1) == Matrix([[1, 0, 0], [5, 1, 0], [0, 0, 1]])
    assert e.elementary_col_op("n->n+km", col1=0, k=5, col2=1) == Matrix([[1, 0, 0], [5, 1, 0], [0, 0, 1]])

    # make sure the matrix doesn't change size
    a = ReductionsOnlyMatrix(2, 3, [0]*6)
    assert a.elementary_col_op("n->kn", 1, 5) == Matrix(2, 3, [0]*6)
    assert a.elementary_col_op("n<->m", 0, 1) == Matrix(2, 3, [0]*6)
    assert a.elementary_col_op("n->n+km", 0, 5, 1) == Matrix(2, 3, [0]*6)


def test_is_echelon():
    zro = zeros_Reductions(3)
    ident = eye_Reductions(3)

    assert zro.is_echelon
    assert ident.is_echelon

    a = ReductionsOnlyMatrix(0, 0, [])
    assert a.is_echelon

    a = ReductionsOnlyMatrix(2, 3, [3, 2, 1, 0, 0, 6])
    assert a.is_echelon

    a = ReductionsOnlyMatrix(2, 3, [0, 0, 6, 3, 2, 1])
    assert not a.is_echelon

    x = Symbol('x')
    a = ReductionsOnlyMatrix(3, 1, [x, 0, 0])
    assert a.is_echelon

    a = ReductionsOnlyMatrix(3, 1, [x, x, 0])
    assert not a.is_echelon

    a = ReductionsOnlyMatrix(3, 3, [0, 0, 0, 1, 2, 3, 0, 0, 0])
    assert not a.is_echelon


def test_echelon_form():
    # echelon form is not unique, but the result
    # must be row-equivalent to the original matrix
    # and it must be in echelon form.

    a = zeros_Reductions(3)
    e = eye_Reductions(3)

    # we can assume the zero matrix and the identity matrix shouldn't change
    assert a.echelon_form() == a
    assert e.echelon_form() == e

    a = ReductionsOnlyMatrix(0, 0, [])
    assert a.echelon_form() == a

    a = ReductionsOnlyMatrix(1, 1, [5])
    assert a.echelon_form() == a

    # now we get to the real tests

    def verify_row_null_space(mat, rows, nulls):
        for v in nulls:
            assert all(t.is_zero for t in a_echelon*v)
        for v in rows:
            if not all(t.is_zero for t in v):
                assert not all(t.is_zero for t in a_echelon*v.transpose())

    a = ReductionsOnlyMatrix(3, 3, [1, 2, 3, 4, 5, 6, 7, 8, 9])
    nulls = [Matrix([
                     [ 1],
                     [-2],
                     [ 1]])]
    rows = [a[i, :] for i in range(a.rows)]
    a_echelon = a.echelon_form()
    assert a_echelon.is_echelon
    verify_row_null_space(a, rows, nulls)


    a = ReductionsOnlyMatrix(3, 3, [1, 2, 3, 4, 5, 6, 7, 8, 8])
    nulls = []
    rows = [a[i, :] for i in range(a.rows)]
    a_echelon = a.echelon_form()
    assert a_echelon.is_echelon
    verify_row_null_space(a, rows, nulls)

    a = ReductionsOnlyMatrix(3, 3, [2, 1, 3, 0, 0, 0, 2, 1, 3])
    nulls = [Matrix([
             [Rational(-1, 2)],
             [   1],
             [   0]]),
             Matrix([
             [Rational(-3, 2)],
             [   0],
             [   1]])]
    rows = [a[i, :] for i in range(a.rows)]
    a_echelon = a.echelon_form()
    assert a_echelon.is_echelon
    verify_row_null_space(a, rows, nulls)

    # this one requires a row swap
    a = ReductionsOnlyMatrix(3, 3, [2, 1, 3, 0, 0, 0, 1, 1, 3])
    nulls = [Matrix([
             [   0],
             [  -3],
             [   1]])]
    rows = [a[i, :] for i in range(a.rows)]
    a_echelon = a.echelon_form()
    assert a_echelon.is_echelon
    verify_row_null_space(a, rows, nulls)

    a = ReductionsOnlyMatrix(3, 3, [0, 3, 3, 0, 2, 2, 0, 1, 1])
    nulls = [Matrix([
             [1],
             [0],
             [0]]),
             Matrix([
             [ 0],
             [-1],
             [ 1]])]
    rows = [a[i, :] for i in range(a.rows)]
    a_echelon = a.echelon_form()
    assert a_echelon.is_echelon
    verify_row_null_space(a, rows, nulls)

    a = ReductionsOnlyMatrix(2, 3, [2, 2, 3, 3, 3, 0])
    nulls = [Matrix([
             [-1],
             [1],
             [0]])]
    rows = [a[i, :] for i in range(a.rows)]
    a_echelon = a.echelon_form()
    assert a_echelon.is_echelon
    verify_row_null_space(a, rows, nulls)


def test_rref():
    e = ReductionsOnlyMatrix(0, 0, [])
    assert e.rref(pivots=False) == e

    e = ReductionsOnlyMatrix(1, 1, [1])
    a = ReductionsOnlyMatrix(1, 1, [5])
    assert e.rref(pivots=False) == a.rref(pivots=False) == e

    a = ReductionsOnlyMatrix(3, 1, [1, 2, 3])
    assert a.rref(pivots=False) == Matrix([[1], [0], [0]])

    a = ReductionsOnlyMatrix(1, 3, [1, 2, 3])
    assert a.rref(pivots=False) == Matrix([[1, 2, 3]])

    a = ReductionsOnlyMatrix(3, 3, [1, 2, 3, 4, 5, 6, 7, 8, 9])
    assert a.rref(pivots=False) == Matrix([
                                     [1, 0, -1],
                                     [0, 1,  2],
                                     [0, 0,  0]])

    a = ReductionsOnlyMatrix(3, 3, [1, 2, 3, 1, 2, 3, 1, 2, 3])
    b = ReductionsOnlyMatrix(3, 3, [1, 2, 3, 0, 0, 0, 0, 0, 0])
    c = ReductionsOnlyMatrix(3, 3, [0, 0, 0, 1, 2, 3, 0, 0, 0])
    d = ReductionsOnlyMatrix(3, 3, [0, 0, 0, 0, 0, 0, 1, 2, 3])
    assert a.rref(pivots=False) == \
            b.rref(pivots=False) == \
            c.rref(pivots=False) == \
            d.rref(pivots=False) == b

    e = eye_Reductions(3)
    z = zeros_Reductions(3)
    assert e.rref(pivots=False) == e
    assert z.rref(pivots=False) == z

    a = ReductionsOnlyMatrix([
            [ 0, 0,  1,  2,  2, -5,  3],
            [-1, 5,  2,  2,  1, -7,  5],
            [ 0, 0, -2, -3, -3,  8, -5],
            [-1, 5,  0, -1, -2,  1,  0]])
    mat, pivot_offsets = a.rref()
    assert mat == Matrix([
                     [1, -5, 0, 0, 1,  1, -1],
                     [0,  0, 1, 0, 0, -1,  1],
                     [0,  0, 0, 1, 1, -2,  1],
                     [0,  0, 0, 0, 0,  0,  0]])
    assert pivot_offsets == (0, 2, 3)

    a = ReductionsOnlyMatrix([[Rational(1, 19),  Rational(1, 5),    2,    3],
                        [   4,    5,    6,    7],
                        [   8,    9,   10,   11],
                        [  12,   13,   14,   15]])
    assert a.rref(pivots=False) == Matrix([
                                         [1, 0, 0, Rational(-76, 157)],
                                         [0, 1, 0,  Rational(-5, 157)],
                                         [0, 0, 1, Rational(238, 157)],
                                         [0, 0, 0,       0]])

    x = Symbol('x')
    a = ReductionsOnlyMatrix(2, 3, [x, 1, 1, sqrt(x), x, 1])
    for i, j in zip(a.rref(pivots=False),
            [1, 0, sqrt(x)*(-x + 1)/(-x**Rational(5, 2) + x),
                0, 1, 1/(sqrt(x) + x + 1)]):
        assert simplify(i - j).is_zero


def test_rref_rhs():
    a, b, c, d = symbols('a b c d')
    A = Matrix([[0, 0], [0, 0], [1, 2], [3, 4]])
    B = Matrix([a, b, c, d])
    assert A.rref_rhs(B) == (Matrix([
    [1, 0],
    [0, 1],
    [0, 0],
    [0, 0]]), Matrix([
    [   -2*c + d],
    [3*c/2 - d/2],
    [          a],
    [          b]]))


def test_issue_17827():
    C = Matrix([
        [3, 4, -1, 1],
        [9, 12, -3, 3],
        [0, 2, 1, 3],
        [2, 3, 0, -2],
        [0, 3, 3, -5],
        [8, 15, 0, 6]
    ])
    # Tests for row/col within valid range
    D = C.elementary_row_op('n<->m', row1=2, row2=5)
    E = C.elementary_row_op('n->n+km', row1=5, row2=3, k=-4)
    F = C.elementary_row_op('n->kn', row=5, k=2)
    assert(D[5, :] == Matrix([[0, 2, 1, 3]]))
    assert(E[5, :] == Matrix([[0, 3, 0, 14]]))
    assert(F[5, :] == Matrix([[16, 30, 0, 12]]))
    # Tests for row/col out of range
    raises(ValueError, lambda: C.elementary_row_op('n<->m', row1=2, row2=6))
    raises(ValueError, lambda: C.elementary_row_op('n->kn', row=7, k=2))
    raises(ValueError, lambda: C.elementary_row_op('n->n+km', row1=-1, row2=5, k=2))

def test_rank():
    m = Matrix([[1, 2], [x, 1 - 1/x]])
    assert m.rank() == 2
    n = Matrix(3, 3, range(1, 10))
    assert n.rank() == 2
    p = zeros(3)
    assert p.rank() == 0

def test_issue_11434():
    ax, ay, bx, by, cx, cy, dx, dy, ex, ey, t0, t1 = \
        symbols('a_x a_y b_x b_y c_x c_y d_x d_y e_x e_y t_0 t_1')
    M = Matrix([[ax, ay, ax*t0, ay*t0, 0],
                [bx, by, bx*t0, by*t0, 0],
                [cx, cy, cx*t0, cy*t0, 1],
                [dx, dy, dx*t0, dy*t0, 1],
                [ex, ey, 2*ex*t1 - ex*t0, 2*ey*t1 - ey*t0, 0]])
    assert M.rank() == 4

def test_rank_regression_from_so():
    # see:
    # https://stackoverflow.com/questions/19072700/why-does-sympy-give-me-the-wrong-answer-when-i-row-reduce-a-symbolic-matrix

    nu, lamb = symbols('nu, lambda')
    A = Matrix([[-3*nu,         1,                  0,  0],
                [ 3*nu, -2*nu - 1,                  2,  0],
                [    0,      2*nu, (-1*nu) - lamb - 2,  3],
                [    0,         0,          nu + lamb, -3]])
    expected_reduced = Matrix([[1, 0, 0, 1/(nu**2*(-lamb - nu))],
                               [0, 1, 0,    3/(nu*(-lamb - nu))],
                               [0, 0, 1,         3/(-lamb - nu)],
                               [0, 0, 0,                      0]])
    expected_pivots = (0, 1, 2)

    reduced, pivots = A.rref()

    assert simplify(expected_reduced - reduced) == zeros(*A.shape)
    assert pivots == expected_pivots

def test_issue_15872():
    A = Matrix([[1, 1, 1, 0], [-2, -1, 0, -1], [0, 0, -1, -1], [0, 0, 2, 1]])
    B = A - Matrix.eye(4) * I
    assert B.rank() == 3
    assert (B**2).rank() == 2
    assert (B**3).rank() == 2
